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	.Table2_C1 { vertical-align:bottom; background-color:#002060; padding-left:0.0486in; padding-right:0.0486in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table2_C2 { vertical-align:bottom; padding-left:0.0486in; padding-right:0.0486in; padding-top:0in; padding-bottom:0in; border-style:none; writing-mode:lr-tb; }
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	.Table3_B1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
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	.Table3_E2 { vertical-align:top; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-width:0.0175cm; border-right-style:solid; border-right-color:#000000; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-style:none; writing-mode:lr-tb; }
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	.Table4_A2 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table4_B1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
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	.Table4_D1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-width:0.0175cm; border-right-style:solid; border-right-color:#000000; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table4_D2 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-width:0.0175cm; border-right-style:solid; border-right-color:#000000; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table5_A1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table5_A11 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-style:none; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table5_A2 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-style:none; writing-mode:lr-tb; }
	.Table5_A3 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-style:none; border-bottom-style:none; writing-mode:lr-tb; }
	.Table5_B1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
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	.Table5_B3 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-width:0.0175cm; border-left-style:solid; border-left-color:#000000; border-right-style:none; border-top-style:none; border-bottom-style:none; writing-mode:lr-tb; }
	.Table5_C11 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-style:none; border-top-style:none; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table5_C2 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-style:none; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-style:none; writing-mode:lr-tb; }
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	.Table5_D1 { vertical-align:middle; background-color:#002060; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-width:0.0175cm; border-right-style:solid; border-right-color:#000000; border-top-width:0.0175cm; border-top-style:solid; border-top-color:#000000; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
	.Table5_D11 { vertical-align:middle; padding-left:0.075in; padding-right:0.075in; padding-top:0in; padding-bottom:0in; border-left-style:none; border-right-width:0.0175cm; border-right-style:solid; border-right-color:#000000; border-top-style:none; border-bottom-width:0.0175cm; border-bottom-style:solid; border-bottom-color:#000000; writing-mode:lr-tb; }
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	</style></head><body dir="ltr" style="max-width:8.5in;margin-top:0.9839in; margin-bottom:0.9839in; margin-left:1.1811in; margin-right:1.1811in; "><p class="P76">REICE</p><p class="P72"><span class="T1">Revista Electrónica de Investigación en Ciencias Económicas</span></p><p class="P74">Abriendo Camino al Conocimiento</p><p class="Standard"><span class="A1"><span class="T6"> </span></span></p><p class="P81_borderStart"><span class="T21">Vol. 5, No. 10, julio - diciembre 2017                                     REICE ISSN: 2308-782X</span></p><p class="P80"><a href="http://revistacienciaseconomicas.unan.edu.ni/index.php/REICE" class="Internet_20_link"><span class="Internet_20_link"><span class="T9">http://revistacienciaseconomicas.unan.edu.ni/index.php/REICE</span></span></a></p><p class="P80_borderEnd"><a href="mailto:revistacienciaseconomicas@gmail.com" class="Internet_20_link"><span class="Internet_20_link"><span class="T8">revistacienciaseconomicas@gmail.com</span></span></a></p><p class="Standard"><span class="A1"><span class="T7" /></span></p><p class="Standard"><span class="A1"><span class="T6" /></span></p><p class="Standard"><span class="A1"><span class="T6" /></span></p><p class="P7">Aplicación del análisis de regresión lineal simple para la estimación de los precios de las acciones de Facebook, Inc.</p><p class="P9"> </p><p class="P6"> </p><p class="P5"><span class="T24">Application of the analysis of simple linear regression to estimate the prices of the shares of Facebook, Inc</span><span class="T25">.</span></p><p class="P8"> </p><p class="P8"> </p><p class="P14"> </p><p class="P15"><span class="T17">Fecha recepción: octubre 25 del 2017</span></p><p class="P15"><span class="T17">Fecha aceptación: noviembre 5 del 2017</span></p><p class="P16"> </p><p class="P16"> </p><p class="P16"> </p><p class="P18"> </p><p class="P21">Humberto Antonio Brenes González</p><p class="P19"><a href="https://orcid.org/0000-0001-5787-1526" class="Internet_20_link"><span class="Internet_20_link">https://orcid.org/0000-0001-5787-1526</span></a><span> </span></p><p class="P19">Departamento de Contaduría Pública y Finanzas</p><p class="P19">Facultad de Ciencias Económicas</p><p class="P19">Universidad Nacional Autónoma de Nicaragua, Managua</p><p class="P19"><a href="mailto:hbrenes1988@gmail.com" class="Internet_20_link"><span class="Internet_20_link">hbrenes1988@gmail.com</span></a></p><p class="P19"> </p><p class="P18"> </p><p class="P22"> </p><p class="P23"> </p><p class="P23"> </p><p class="P60"> </p><p class="Standard">Resumen</p><p class="P27"> </p><p class="P11"> </p><p class="Standard">El análisis de regresión lineal, es una herramienta sumamente importante en el mundo de las Finanzas, debido a que permite realizar proyecciones y pronósticos de una variable dependiente explicada por una o más variables independientes.  El objetivo de este trabajo, fue determinar una ecuación que permitiera estimar el precio promedio mensual de las acciones de la empresa Facebook, Inc., a través de un modelo de regresión lineal simple.  Los coeficientes betas estimados para el modelo fueron significativos tanto para la constante como para la pendiente, medidos a través de la prueba estadística t. Así mismo, se realizó la prueba global de significancia de los coeficientes betas, determinada a través de la prueba estadística F, esta resultó ser sumamente significativa, lo cual, permitió la validación del modelo.</p><p class="P55"> </p><p class="P55">Palabras claves: Regresión lineal simple, variable dependiente, variable independiente, coeficiente betas, errores típicos.</p><p class="P20"> </p><p class="P12"> </p><p class="P12">ABSTRACT</p><p class="P28"> </p><p class="P13">The linear regression analysis, is a tool that is extremely important in the world of finance, since it allows to carry out projections and forecasts of a dependent variable that is explained by one or more independent variables.  The objective of this study was to determine an equation that would allow to estimate the average monthly price of the shares of the company Facebook, Inc., through a simple linear regression model.  The betas for the model coefficients were significant for the descent, measured through statistical test both constant t. Likewise, global test of significance of the beta coefficients, determined through statistical test F, this proved to be highly significant, which allowed the validation of the model.</p><p class="P13"> </p><p class="Standard"><span class="T26">Keywords:</span><span class="T25"> Simple linear regression, independent variable, dependent variable, coefficient beta, typical errors</span></p><p class="P56"> </p><p class="Standard"><span class="T1">Introducción</span></p><p class="P25"> </p><p class="Standard">En la actualidad, las redes sociales juegan un rol importante en el desarrollo cotidiano de las personas en los diferentes ámbitos, desde aspectos personales, laborales y hasta con fines de recreación; por lo que su uso se hace muy común a nivel general.</p><p class="Standard"> </p><p class="Standard">El <span class="T29">(Diccionario de la Lengua Española Edición del Tricentenario, 2014)</span>, define una red social como una plataforma de comunicación global que pone en contacto a gran número de usuarios.</p><p class="Standard"> </p><p class="Standard">En el año 2004, Mark Zuckerberg crea Facebook y junto a Eduardo Saverin, Chris Hughes y Dustin Moskovitz fundan la empresa Facebook, Inc. Lo que  inicialmente comenzó como una red social para los estudiantes de la universidad de Harvard, gracias a ser un innovador y exitoso proyecto, su uso terminó por extenderse a cualquier usuario de la red. <span class="T29">(Wikipedia La Enciclopedia Libre)</span>.</p><p class="Standard"> </p><p class="Standard">La empresa se encuentra en el sector tecnológico, tiene su sede en Menlo Park, California, en los Estados Unidos. Para el mes octubre de 2017, la empresa contaba con alrededor de 20,658 empleados a tiempo completo y proporciona varios productos para conectarse y compartir a través de dispositivos móviles y computadoras. Sus soluciones incluyen el sitio web de Facebook y la aplicación móvil que permite a las personas conectarse, compartir, descubrir y comunicarse entre sí en los dispositivos antes mencionados. <span class="T29">(Yahoo Finanzas)</span>.</p><p class="Standard"> </p><p class="Standard">Según <span class="T29">(Wikipedia La Enciclopedia Libre)</span>, la empresa cuenta con subsidiarios tales como Instagram, WhatsApp, Oculus VR, PrivateCore, entre otras, lo que permite a los usuarios, tomar fotos o videos, mensajería en plataformas y dispositivos además de tecnología de realidad virtual en un entorno inmersivo e interactivo para jugar, consumir contenido y conectarse con otros usuarios. <span class="T29">(Yahoo Finanzas)</span>.</p><p class="Standard"> </p><p class="Standard">Al 31 de diciembre de 2016, según datos tomados de <span class="T29">(Yahoo Finanzas)</span>, Facebook tenía aproximadamente 1,23 mil millones de usuarios activos diarios y en ese año percibió cerca $ 27,64 mil millones de dólares logrando un beneficio neto estimado en $10,19 mil millones de dólares, representando aproximadamente un 37% del total de los ingresos alcanzados en ese mismo año.</p><p class="Standard"> </p><p class="Standard">Dada la importancia que tienen las redes sociales hoy en día para las personas, y siendo Facebook una de las más utilizadas, sumado a los ingresos percibidos por esta, el propósito de este artículo radica en determinar un modelo que permita estimar el precio de las acciones de la empresa, a través de un modelo de regresión lineal simple.</p><p class="Standard"> </p><p class="Standard"><span class="T29">(Quintana Romero &amp; Mendoza González, 2008, pág. 109)</span>, afirman que los modelos son una simplificación de la realidad y a su vez establece que un modelo se compone de relaciones entre variables.  </p><p class="Standard"> </p><p class="Standard">Por su parte, <span class="T29">(Gujarati &amp; Porter, 2010, pág. 15)</span>, plantean que el análisis de regresión trata del estudio de la dependencia de una variable dependiente respecto de una o más variables independientes con el objetivo de estimar o predecir el valor promedio poblacional de la variable dependiente en términos de los valores conocidos de la variable independiente.</p><p class="Standard"> </p><p class="Standard">Así mismo, <span class="T29">(Díaz Fernández &amp; Llorente Marrón, 2013, pág. 36)</span>, definen el análisis de regresión como la técnica que se ocupa de analizar la dependencia entre una variable dependiente y una o más variables explicativas. Su objetivo consiste en estimar y/o predecir el valor medio poblacional de la variable dependiente a partir de los valores conocidos y fijos de las variables explicativas, obtenidos mediante un proceso de muestreo repetido. </p><p class="Standard"> </p><p class="Standard">En un modelo de regresión lineal simple, plantea <span class="T29">(Webster, 2002)</span>, se establece que la variable dependiente es una función de sólo una variable independiente. </p><p class="Standard"> </p><p class="Standard">En otras palabras, la variable dependiente se plantea en función de una variable independiente para estimar el valor de la primera a partir de los valores que tome la segunda donde el propósito, es determinar una recta que se ajuste a los datos muestrales mejor que cualquier otra recta que pueda dibujarse. Esta recta está determinada mediante la estimación de los coeficientes beta. <span class="T29">(Webster, 2002)</span>.</p><p class="Standard"> </p><p class="Standard">Existen distintos procedimientos, para poder determinar que la recta se ajuste a los datos muestrales, entre ellos se encuentran los procedimientos matemáticos de los Mínimos Cuadrados Ordinarios (MCO) y el procedimiento de Máxima Verosimilitud.</p><p class="Standard">El estimador de los Mínimos Cuadrados Ordinarios, es uno de los procedimientos más conocidos. Este plantea utilizar, como estimación de los parámetros, aquella combinación de los coeficientes betas que minimice los errores que el modelo cometerá. <span class="T29">(Mahía , 2006)</span>.</p><p class="Standard"> </p><p class="Standard">Por otra parte, <span class="T29">(Mahía , 2006, pág. 3 y 4)</span>, establece que el estimador Máximo Verosímil, es una segunda aproximación, la cual consiste en utilizar lo que se conoce como planteamiento de estimación máximo verosímil. Este propone utilizar como estimadores de los parámetros aquel conjunto de parámetros betas que hace más probable observar una determinada.</p><p class="Standard"> </p><p class="Standard">Sin embargo, a pesar que el procedimiento para cálculo de los estimadores de los coeficientes betas sea distinto, haciendo referencia en los procedimientos de MCO y Máximo Verosímil, <span class="T29">(Mahía , 2006)</span> afirma que el resultado de ambos procedimientos van a coincidir para el modelo de regresión lineal.</p><p class="Standard"> </p><p class="Standard">En el presente trabajo, se plantea utilizar el método de los Mínimos Cuadrados Ordinarios (MCO), para estimar los valores de los coeficientes de la constante y de la pendiente, los cuales servirán para calcular el valor de la variable dependiente, bajo un modelo de regresión lineal de dos variables.</p><p class="Standard"> </p><p class="Standard">Esto quiere decir, que el precio de las acciones de la empresa Facebook, Inc., se encuentran en función del tiempo, estando ambos expresados en meses; siendo el precio de las acciones la variable dependiente y el tiempo la variable independiente.</p><p class="P55"> </p><p class="P24"> </p><p class="P26"><span class="T4">Materiales y Métodos  </span></p><p class="P24"> </p><p class="Standard">Para estimar la ecuación de regresión lineal del precio de las acciones de Facebook, Inc., en función del tiempo, expresados mensualmente, se hace necesario obtener las cotizaciones de los precios de dichas acciones, para lo cual, fue preciso obtener de <span class="T29">(Yahoo Finanzas)</span>, las cotizaciones durante el período comprendido del primero de mayo de 2012 hasta el primero de octubre de 2017, obteniendo como resultado un total de 66 observaciones, a como se puede apreciar en el anexo 1.</p><p class="P55"> </p><h2 class="P64"><a id="a__Planteamiento_del_modelo_de_regresión_lineal"><span /></a>Planteamiento del modelo de regresión lineal</h2><p class="Standard">Para poder estimar el precio mensual de las acciones de la empresa Facebook, se utilizó un modelo de regresión lineal de dos variables, la variable dependiente y la variable independiente. El precio promedio mensual de las acciones de Facebook, Inc.,  cotizadas en el mercado financiero Nasdaq, se estableció como la variable dependiente la cual estaría en función del tiempo, expresado en meses. Es decir, la variable dependiente del modelo son los precios y la variable independiente es el tiempo.</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P58"> <!--Next '
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		--><span style="height:0.198in;width:5.6972in; padding:0; " class="fr2" id="graphics1"><img style="height:0.5029cm;width:14.4709cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAiMAAAATCAYAAABCzw01AAAACXBIWXMAAA7EAAAOyQEghXBWAAAMLElEQVR4nO1dz0scyxOvAf8IWfSwLxpC2NMiAc0tEtDEfQQiuQYhbEDIixcPQvAgD/awF18Cgosg36u4IDEvBoK5qRCWnCSErC97MIj/RX+7e6Znemb61+xO72rSn0vMbk9N14+urq6qmR1CCIGDg4ODg4ODw6AwNOgJODg4ODg4OPzecMGIg4ODg4ODw0BxxYORL+h58Q00YBTWP63ByyJ4g57Rr4VL9E9lBZZOyd/9l/FZYxWN187p31MrNTiqDndx78HyYBfX3P4779Dde00obW3D5rR+7gfLC+jBt8fQ3p+DMeg/r/T+u8F/SoJ5ZOQnjmuuSxW6kEteus7Hh9ij5yCGSP9hMMIrIYlqV4svB3QugO4xpTvwsNj3u/8GGPZevn6MdrAjOYYRuNlnGY9VF2F93w8kSjeGu6QyWB6s4hrbP/Un+3eg3dmGsc47uFtsomP25fwLQPWyB4cN5D07CT6chPd4LKJjV+HJpzXUvw07CmiJr1v+bxXG24XYJhnjh37OggsFGJ8E11iXKqTlwh8OCILg60cDQl3TQC8fXefjQ+zRcxBjtr7tIRLEcvoPgxFeCWFEGDiLxrNVuN1X5xCgOOcddeb6esvfDj8ugG4SpQKMD2wSo3D7jx4uvxI8WMB1tX/sZJ7WRnBwEZx6inPwv5XPwWEHBx31sj9u+k9YL51gn0M2rCrMBmOPti6Qd68BNztVNNuPDEmnBTt085yER9PYF06vebG2/iQ/9DM/uPAPal+ABSb8/0/HCxGN66pLFURyIYeDpUm0FAQe1a0gC1ScQFXAewnR/35kF/npukcfYp2eQwpkTXD658o0F/A1iGbDiPCPAkzhf47hHL7+IBf3e7YOtnH230/671Rlov+pcbYJ9HhaHCgPDgngk/FfTQB8oOE3l7H7d2AKByPH8BO+d/DJiOj78G0QiCTKFjRIWYG/G3/CbNX+6fTs42dFMCvmhwbA8y/giGSMD1vIz5D4wQxAAW6X8GZ2/1c+WUvkQhAGmQCND19wcFaGg+U3fiDSqcbH96rrnHyINXoOanD6j4KRwxbEFxREJ04uSozqqr5hjTdWwT/xpJ1KrAZLwKctKZIpPQhrte3lBWDXpmt36etSpaRYClhGR8zT7CGXUqRzBohSsuKar4pXPf2y0bwjOvwconRxXAZJGeF7bwE8WC9wdbpL9O++X5oTpSS1+ssgY/GcAtwqpIIIve1ENOU8mMggDz4kdBX2LU5pQy72n8neIGc9U2c+Ck9eJ3RRnIAnpSYcn57DzsdLeHm/he5immTe6YzrsPewMoqW9ltwVp1D4gBTYktJiHo/ZDROmzBebJI5oXAdyfiZrnoo8JMsGI6CmWHv5f5aOJSXr0huvfkOuW9SXduVT+Uhkwvjn2VHdvfgOeyhxq4gEAnG6nXNw9SH9LBGjeiZty/ktjcIadrZsygM1n3vNCL9Rz0jqQWFN7nQcBcxI5eAlYG+Lm3DeyCO8gT+ruBrKovQXtnAAQlfr082a9FrYWm3BQf1sp+OC5qejsMxQWozON2O1Wto/dsKPTk94U8YqesC2nwpiYwhcw8dEaG9Jzip+AaW5OnBrUeAPhWA3mf3DXh0IdXgNjXGwJmGUbyK1wL6rqWfkIlw3oBpLnCy5+bAatF8ECkIUKjRPPONJVpkLBvGX5tBf0Yy1swJG/IUn842uXcMOh40MsiLDxFdhX3bsf9FBH9lsDcbeqYHmBF4lTpVBk4Hr5/jdgv+2fdP1TJnPnZjBAcHF9AmfwtvRDZ8HMhItGQGQqOGgOsXSc1Hyg9DFAzLMnOz9RoIddmz75D5JpD7tc6Ev0nV3sJBtSrxxQKfmoROLmF25BzkgYgPva6T8jL1ITr/Z0ivG/nkol+Rz7O9Z5mu+/x8B9P/EGOQLSh2OmDgFyhZ/FQY68GXOBDxI5w1QNWIuJ+SY0EMSWO+RTSi5NKgBxtNmnUJx0AZNjvbnAGwOm68KTF9HQTlXa6UxDI6mJf64RxJE3qbnbLAWHyHluQJ0X6Zlt9wFwryEr4HQ/gTuJrXYZjd3/bU9LnUsGreiXmyOYQp5vmJcLGzOZGFl3Su1RlODiwblkhPm+jPXMZxmuk5xR200b15aHjQyiA3PuJ0dfZtx/6HYTODvdnQMz3UlO4IdUWdDp4n7DZhR/ekAi0Rf45KOrYQylncI6Dix4egvC29R0KXPfsOqW+S+zW8ifgfROUyI5+aWS7D3s1bmI4uc0VgqOusPkS7Rk3pdSEfnn4ue0MI23tWAM26z9V3BPoPgpFoQWlTT1yz1ythje8L2gvSNse1FfBqvuLiqRk2JnlS4MAY4TZZ8XXR3ENMV7338yc0wm08WyC1SqSKzEU8HXwIskLhSbaFdlIncBNeDembzDvRaEfQbgensjCSj2S0vlhOfcY73DAbFktJGvKUScaqOcUzakb35qDmQS+D/Pjg6ers27L9G9mbDT2bQuY7klA5+zzKNMA1P3fZIyAqb8vuIdRlDr5D6JvE10bzZevO0KYywn90cxRvMqRP6AT2DrHNyORDoetLzOpDzNeoKb1s8sl5b0jC9p6lXPc2fMd5EIyYLCgG3ZMLXNlAeuNwjPxRzFCwsXSZ4DrJ3OmjQ3WWSjpRN0ileLpE37/5X6kyEEa8CunLNyPVvNNzENBRySjmcKNsWCxTYMqTZq4xKOfE2VGGe5vxoJNBnnxwdHX2bdv+TezNhp41YDzFN2UVVE805FGm4eYk6FsyQbq8Lb+HWJdZfYehb+Kv5bOmSR10LpCpTzUF/w4J1vvUWH8Hy9OqnhDN0yuZfUgXazQrPZV8LOwN6uty3rNAse6t+I5RPxgJDdTg0Uht1FYsQAkAjmMfksnskfpa8JgXGxOlCsnz6k+BlX3igiXf1W+sweZ0kjZJVbFHyAKh0IYZCIRU9h7NA2rsghImEWUsA0Hu8WECUN2AVyF93gGQWtsGgsoILNXU82ZzCHmvvOFOOYTOW3TzdSF+EavbERCHS57t3yigozrEonviQPZmtgUyFvDUhYzN5mQmzwgXYh6STk12v5kW2OVDYt827R8M7e31Iyt6ltf/o9OUEbS9GnkgknMsmOWg7mfgytvSYMZUlwQmvsPUN5W90K8z4O/Cpkf2eHXKX4ttylQuyZdZjS0+RlO7pHH5M/zbmSN8pZHStZ/12qkoSnmytbeY87iUTzKTj9E+CKZrVdB8anPP0q17E96y+I5A/0NkcYTdsKdNeNqYIAYguSpyKPIXwpS9za1J1MCKfVCkAkN+BLXGKS4as3RvAZbImPkX0A4NJKo3kvTOKUn/TAd19U+P0em9JqMNyU5h/6Ryzt1b92SEgCdB9md2ZhJg98RPS3Edw3peBfTDJwvIdT/p/B9+XMVyUM+bzQFogxLhexveb/hNTIzOLJHDfBP5nwXNQ50XUCeRKbmOOgrqiEIDITKGsDxX1vKUWcbFOe+V4Zz08uRRlvAwByb3O2vsWedDbN/27N/U3uj4vPVMIKz/84EzUPt9PsM9sSKAvichB2j6RSik/QyJMpGUJ4Uuu/Edxr4pCoJ8fxH0OaSe0MC2qLUpE7nwL4FjgYf/+K+/aZ1jW18FEDR8GunaeO2Vcx4H3cnHaB/MsFZjsLtn6de9nrcsvoPpf2isuubxzadqkAYU7PB1w8hjbx0NUc0YP70j+ELz8qBs/BAIeBLNTTZfLa8imQlSzNV4E7AQonvVtyEpJ5HsRHqTyljDU3YZm8/JyHY0dI3vZyLzbugS6PiwZP/G9mYwh270zJxpvHs/a0nFzzhMVRatvjcmer+Iol9EyA+BOU/drrOefBPXU6AteXbzQraUXIR2B3oZiXRNMp7px4Z78Wu9jOv6hXV57Q0m1+W4Zxmt+9x8R6T/K/7bNA4ODtcL7B0T3KOjWUFfhkbe1GnzpWFcv9GS6vdRcuBnELD+VuKc5JLSNck4ycqyDr8cOP27YMTBwSFf4FNTe2UVjVfekd4BgxdZcaC1+6DkaG3jl70oUIJe+BkQwn4Rbem9B/QqF6Gu4y+Mc/iFkdC/C0YcHBxyB03T3ic/hLVAfs1V2R/CEDY/dtYsv9bfsNzMoRt+BglpaShndCuX/una4SpCpH8XjDg4ONhBxlo73UAtTqdn/Io/dpcHupDLlde1g1WI9P9/Ma6+8gDCghEAAAAASUVORK5CYII=" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación0" />1</span><span class="T10">. Planteamiento del modelo de regresión lineal simple</span>.</p><p class="Standard">El modelo utilizado quedó expresado de la siguiente manera, siendo esta la Función de Regresión Poblacional (FRP) del modelo:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:1.4791in; padding:0; " class="fr2" id="graphics2"><img style="height:0.5029cm;width:3.7569cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación1" />2</span><span class="T10">. Función de Regresión Poblacional.</span></p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard">A partir de la FRP, se estima la Función de Regresión Muestral (FRM), la cual, sirvió para la estimación del modelo de regresión y que se definió a como se muestra a continuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:1.4791in; padding:0; " class="fr2" id="graphics3"><img style="height:0.5291cm;width:3.7569cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación2" />3</span><span class="T10">. Función de Regresión Muestral.</span></p><p class="P29">Dónde:</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:2.4374in; padding:0; " class="fr2" id="graphics4"><img style="height:0.5291cm;width:6.191cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAOoAAAAUCAYAAACDDKEnAAAACXBIWXMAAA7EAAAOxQGMMD9aAAAHgUlEQVR4nO1bPZayPBS+OWeWAhYeV4ArgGmsbKfTEhs7y+lssMTOlspGWQGuwGMh7CXfTQIhkPDjzLw6cz7u28y8hPDc3zz3wrxRSmGQQQb53fL2agCDDDJIt+iJmu3o1F7Bhf28OAMNXfJ0VIMMMkhFlESN6ZJ4sHcCSJEOWwAE4iUlxKNOkELiW0PCDjLIi0RJVJeEmKChetUNCaVh/Z4XS15QgB34iNeFoYD8Sfn/+jFeEuoJxXsz1rcK1WWnaeLz0zTbTam94v8LzzpR1WdqIpXCgpIG9GpHMLb/NaLviAhE+J8FYX95tR9f5x83TCG42nCbub3veQPLJ4cgwgQBCA4iSdkFyz9AENkQzZ9He4tnriZqpcnoblpTKr3BxZnDwXoGqi9KdocrODD/1cXkxfIMP/KD6AYbZIYuKAn5Uv+kcLs4DxUoTn0tfwOLlQe3lP0iLmS7D5EwT+1NmQJ4eG7USmOR0cShoCiV3a8Ak5ksKr9SsAAm1H81il8tz/Bjdop4MdBy4pX+YUUCMa0fKFB5j+qS2QKod4yRBriMRFM7miMN7nM0ixOvibFKUWh181asyi2gyFNGhbejBMIwISWSjJ6iCziNpbDEI3qfGIpeqKTwTWscCNIEfAtIfS+zDnXdF8iksKdfEmA9iN4ylH1Zt01qGO0dFC2K2BdAPrsLl7yeQbdtcqRFH1XB+g6n/P7KejZ05CxSPbWqui7OZ4DPO6wlzi4/mm1hspsZ6wi28vkXsMmKoaBm/3zH1l161tdgjAUTuGgFqj025DDJxUwF7wjx7Ei9z3F3UkmxiJ9Q+InaxKsf/vMIh0u5Uml9laANcyNfYgb/ADhQOG8J2msHS+8GM0phvZuCvdpC7K/pXV1zXMIUg2xD0cDkCCO5rTDcFQHQBJ3JKVQEp8xniSyv71nvnLjiOm7Lws4Kz7DY46YjBWM+C2AKUSU4PnbvLFi69fhkv1IWMWBHW1hGVxjjdZougaCOJRlqwv0O8NFim+gEme/TYtrv7Rdl4rFEPAImqXK/ipadjOqppelaYipjqs2PqnT4wYh1hM9hw9GUjlnbtKn1oeGZlv75hq376FnMgOSMRaxxgvVDsVFOfd0ZngceeB5Tum+S/qyknPcWCiHY5QnetRhmp+4EZkb/sqKRAL8XY+eyV3qT0QQtf4V7ZgGuIXINYFHK9XVpeW7HyzwJ81Mj3rIKi6e9pVxnVS/M72FUKpEYqcoM5P1svUxKRumBXtR+o0MPhjG+XSgr9ePi5EffgjOWSdKMG0NX1VuxDd9zsil9bo+xRK7gGON1pgOb/nNdfIlpIh1QnIyH8oTTdLVh7ECtcLX5UbFbhx+asbJnnCC6GPrQCnP7hq176CnXhCo7RUzvhjUtsaF98LA415ruTvkp6hvT4549v1AIDRjq53Rjz1FdxB0UpKUuvOpjYEgbyjUmTAILUgzAw118Y8mChbpEvb44N+jDhyRjBaNY7wTvFXoqDqIWTTQ98nuCg6TnMdt4cs737cLdvGdlLsCKzvmGdJYgFRN0UcYEv18tQmKuMJGZY7CNdk9PP/bRpw1r07BK88/Xbd2up2lNvUD1i40yUeMjUxTOWltaUAO1d1Plh6ivcQrHaMIR6VlpfHbqqtXbKJqDRNXHaKw6EQ22MVX0HEu1X+3CqqBGyzvztOacahXFMorFDZ/RRv00jHW6WCtuXbhNexqSiEv+Dp33f1PeCnFaXE+wbPdZjRuDbYoTQzVXLz/20acFazWxFDx1/5js0tPWrXo2rcFi4z4YGzJRY5HWhgpXUIN/K0UAqHFb0J6wVmk47cJeZHpfG18dcV0gUPZhJz4GkzIci4XVzezBGqHLLpUpOAuC4yzvdbTrajHLQMco1kenDHzRWNGlJ57fFoAaRl5MJ3CWSVYGQryc0vt6047btKc8XdigaUtHGzYLKe1qMy53LTHx9gTm4vG7Kf2I8Af1/sMYQMFQvtzHvjHbwXQ7okloG2xkeLvQ5YfavVWs1VNJDiZdk38s8rCtZ/NuPXkbaloDoi/djiAJ+8XGW6G8mJqtwF6OWI9YhEo5MPmX3/yyKTPnzsV0DuSf9DiBWjoEd18xmsMxmV4d5VRucsO9iNiLfxbpP0A7XbIOHGpzOiWw8OmfHEjUr6tV3wIdowXheYH0zAZUT+7X/upLx6gNbfJAXtlETCvx+Vkr7ga9L+h3EnEdYEuwT9tLnGKSXdqODx33K+4nvvfhxCekxf0us8FiRb0cA8OVjtkgD+nrNSjeJPTwY7cfWHI1Y7Xgfe7Q1UrYvLzP5J8v2Br3GnXq6ZJND1v0iQ2eqG5IiflLQWGoa0cn8W154FPFZqy5FAOEQ4hOCBsCoJuuW35C2l6ztV03Ynz4c0wdo/5M/bPPdtwGveu4QgqtMDU9fKi/j9T0dxOoY+r0Y4H4UTv3uFe/72u2/pKehjV9YqPzz9yQGcH8kTezr5a/8NXSIIM8KB2JyhroCczCGOLYpe4f+GaV9xrIos3vJwcZ5G9Kjz8c3wNSbOT+/T8gfqX0pVSDDPKXpCNRDX/6Nsgggzxd/gMRF7PDy0Cc2gAAAABJRU5ErkJggg==" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:2.9264in; padding:0; " class="fr2" id="graphics5"><img style="height:0.5291cm;width:7.4331cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
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		--><span style="height:0.198in;width:2.6354in; padding:0; " class="fr2" id="graphics7"><img style="height:0.5029cm;width:6.6939cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.2602in; padding:0; " class="fr2" id="graphics8"><img style="height:0.5029cm;width:5.7409cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="Standard">En el término de perturbación, <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.1457in; padding:0; " class="fr3" id="graphics9"><img style="height:0.5029cm;width:0.3701cm;" alt="" src="data:image/*;base64,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" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;">, se incluyen todas las variables que no fueron incluidas en este modelo, para la explicación de la variable dependiente.</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P63"><a id="a__Cálculo_de_los_coeficientes_beta__iVBORw0KGgoAAAANSUhEUgAAABQAAAAXCAYAAAALHW_jAAAACXBIWXMAAA7FAAAOxwF1Wo59AAABf0lEQVR4nO2UPY6DMBCFnyWOAhQRJyAnMGm2SpsulNDkBnsAKEm3bSqawAnICaItgu8yO8b8BJJVQMp2O5Vly5_fmx9bRIR3hvVW2j_w74BlKCg43m34Ceoqgg2IhcCSQhFAs_YFIZMK6dpBfInhhC4ok8sUlqGBMY1hWo0N1wPhwnvXGxQkvVI5AFVKnw3NR3LolCi6Xc3K326WWVbnUyOEb2Jjd4q1XaO4iuyXsBGw_r6YhefCLkOI4MgzuUdBGeQMZRPgnbWVA8hM1MmVnPiIYL3SFX6ZuwmwhhHoY9v6taMvJCdT4V260ZYXKCxzU114cOfdM9d0v6LQ7dSrb4Bq8AunO1FnnPq0Tl8Z_pXT_KiwL0gfitJd3FY9wWHUzxqW44MKzmoLHQNLyrtdPREiHk73YzsmpMhINuAcj2GxXxjD3NB1Bc797BZ5Fhb7NdYWFuRX4NOCzInO2WTGrXNbyrmzqmP0vbV5599Jf0bCiioS0RJl0INEgifyafwAKLuiID2Yr_kAAAAASUVORK5CYII=_y_iVBORw0KGgoAAAANSUhEUgAAABQAAAAXCAYAAAALHW_jAAAACXBIWXMAAA7FAAAOxwF1Wo59AAABmUlEQVR4nO2UPW6DQBCF30ocBSgsToBPAPRu3ZkSGt8gB4ASOreu3NicAJ_ASgF7l8n_ARsnFiA5XbYB7Wo_3ts3g0NEeOdy3kr7B_4dsEkZxbW1ERbo2wwuwFYCG0pZDMk63AhVxFFuPeT3HF7qg6poncIm1TBBEzCpxoUfgHAXe48OHBHNqZyAvKQPRQtRHAclnLqHfgt3yTrL_HpWQkQlEndQLO1qxW3mzsK_AfvPu34JfLhNChbXYiYPuFGFaIGyJ6BlbeMBUcX64kFeXiPebmTCs3f3BOyhBYbYGb9udkJx1gnvy0RaXqGwueh0EcCfreOkW2naCYt_vGMF5JNfeGPdFefxWq2vqP3hbhuovs33KJOWhAmmgGMgtop9blIvcLT72c1YO_5CPdqE4mGVO3I6LsOYyYlg_XQq2kVMx_swjIuwOEGq00DeQRsWDd2348H8Mi7kR60edYRfo3hJIBZMBhP8dOD8GsjMUhNkwZp0S91Ru3OuJsqlsyqqza8tBqth4hGpV0Zh1hLLFipTS0wRUfXy_Avq0bmOZzIUDQAAAABJRU5ErkJggg==_"><span /></a><span class="T12">Cálculo de los coeficientes beta (</span><!--Next '
			span' is a draw:frame.
		--><span style="height:0.2398in;width:0.2083in; padding:0; " class="fr3" id="graphics10"><p><img style="height:0.6091cm;width:0.5291cm;" alt="" src="data:image/*;base64,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" /></p></span><span class="T12"> y </span><!--Next '
			span' is a draw:frame.
		--><span style="height:0.2398in;width:0.2083in; padding:0; " class="fr3" id="graphics11"><p><img style="height:0.6091cm;width:0.5291cm;" alt="" src="data:image/*;base64,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" /></p></span><span class="T12">)</span></h2><h3 class="P67"><a id="a__Coeficiente_de_la_pendiente__iVBORw0KGgoAAAANSUhEUgAAABIAAAAYCAYAAAD3Va0xAAAACXBIWXMAAA7GAAAOyQFtTdFdAAABe0lEQVR4nO2UMXKDMBBFv2Y4CrhgcgI4gXDjyq07KMUBXLpLY0ro3LpyY_sE_AQZCqO7bCQEmMQJ0WRcpIgqENrH379_5BERnrG8p1D_Qb8EqYLiIMd1spVeCCUHcwfJjFhSAdEebS3gqwIGWiUZVlQSx_ewCUhSZiCIsD9oiC3qQ_aGmwK476BIFTsYDKI1ln2BOh9ti_kWwndsrW2sK9F62alRRUxBfjUGgUo_C5mAJJ0q__SyAIqYkWG4Qu4gddMudD1gpY3gnJjojE90PxdyV9Q21osoRPD5RHWCLPnsxEaQnPTVT0uLtBof4ENEum99THSNBikaasalQ7nJP5o_7Me7EK2_enxIZCzBqxQmrEZRi2aIcaU9qTBeUA_J9gWr6_EloDBKseBDa_LU5_cuc86Lu_gNmm0N0Z_3Ri8m_vwMiWmDA_qJWu987L0IH_Y1DxE_M8ZnKLv2PVHrzDghMA7hqufIcutleimtIldGt4zZ9PVv_94N_Q6Y_aP9X6_6FwAAAABJRU5ErkJggg==_"><span /></a><span class="T14">Coeficiente de la pendiente </span><span class="T12">(</span><!--Next '
			span' is a draw:frame.
		--><span style="height:0.25in;width:0.1874in; padding:0; " class="fr3" id="graphics12"><p><img style="height:0.635cm;width:0.476cm;" alt="" src="data:image/*;base64,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" /></p></span><span class="T12">)</span></h3><!--Next 'div' was a 'text:p'.--><div class="Standard">La pendiente, indica el grado de variación que tiene la variable dependiente, ante un cambio de la variable independiente. Para poder estimar el coeficiente de la pendiente (<!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.1665in; padding:0; " class="fr3" id="graphics13"><img style="height:0.5029cm;width:0.4229cm;" alt="" src="data:image/*;base64,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" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;">), se utilizó la siguiente fórmula:</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.698in;width:1.5102in; padding:0; " class="fr2" id="graphics14"><img style="height:1.7729cm;width:3.8359cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación3" />4</span><span class="T10">. Cálculo de la pendiente de la recta.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.448in; padding:0; " class="fr2" id="graphics15"><img style="height:0.5029cm;width:6.2179cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
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		--><span style="height:0.198in;width:5.4472in; padding:0; " class="fr2" id="graphics17"><img style="height:0.5029cm;width:13.8359cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:2.2602in; padding:0; " class="fr2" id="graphics18"><img style="height:0.5029cm;width:5.7409cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P67"><a id="a__Coeficiente_de_la_constante__iVBORw0KGgoAAAANSUhEUgAAABIAAAAYCAYAAAD3Va0xAAAACXBIWXMAAA7GAAAOyQFtTdFdAAABkUlEQVR4nO2UwUvCYBjGn4H_giKI4DoFjujmqcNYBUJ4ErxIF0HoELGIwDqbFyG8Bl3Ei7CTBEElOwSGNwmFCGxCDWT9EW_f26etpTbFY_9l795972_v93wPX4CIsIoIrITyD1oSZOq0d3CHrquUPi_hnIDgH9SuU6zYAcRd6BUZoqljBNWKdSQbGVIwG_YC9ehkBEEYZ6cM4jRxkw3RNwEl4mMiQ3uANkrEDezwBuPp2dmivI18xOfW3t6H9lPakuxpDK1CcpXV5CwGanwuxAXq0a3uZOtR4OqoQBcGfEO_QaaFFzvZRDIRhJIoCXlb_BpiyJL_iT4sRwsxhDXvCr2Lphqfe2ITULPVcd5iofFpweCaTYXb0wLXjQzGP2CgT_oPPAuZKQ_rP8V3PjCLpGrQxDAkZhPPRBZejfE2mCY6JhfUb0fHhXKD1Wz3Wx5Qu8v9w938hxazIjDRwqXPUqD7R65FNLQswwHlK8wzCzQ0LwuU4_bNpTqQ9o_pJh0UFr6PFLUkDNQpEy0KmhUrA30BhwuNZCtB7moAAAAASUVORK5CYII=_"><span /></a><span class="T13">Coeficiente de la constante (</span><!--Next '
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		--><span style="height:0.25in;width:0.1874in; padding:0; " class="fr3" id="graphics19"><p><img style="height:0.635cm;width:0.476cm;" alt="" src="data:image/*;base64,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" /></p></span><span class="T13">)</span></h3><p class="Standard">La constante del modelo, significa el valor que toma la variable dependiente cuando la variable independiente toma el valor de cero. Para estimar la constante del modelo de regresión lineal planteado, se realizó a partir de la fórmula que a continuación se presenta:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
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		--><span style="height:0.198in;width:1.1563in; padding:0; " class="fr2" id="graphics20"><img style="height:0.5029cm;width:2.937cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación4" />5</span><span class="T10">. Cálculo de la constante de la recta.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.4374in; padding:0; " class="fr2" id="graphics21"><img style="height:0.5029cm;width:6.191cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:5.8744in; padding:0; " class="fr2" id="graphics22"><img style="height:0.5029cm;width:14.921cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAjQAAAATCAYAAACHvZekAAAACXBIWXMAAA7EAAAOyQEghXBWAAALcUlEQVR4nO1dO3byOhAen5Ol2BQcVgArsGmoaNNBiRs6ynRpoCRdWiqawArMCjgU4L3ojiQ/ZFu25BcJ/9VX3HN/sGfG89JIMyZvhBAwMDAwMDAwMHhlvP22AAYGBgYGBgYGbWEKGgMDAwMDA4OXh1DQnMnS8uBLdtV4C49gBTaA9SzBDAwMDP5JhDsycXwYnQjsXZNTDQzq4ry0iHct1iVCQeNae4IB9hvSdYa0KFuYZKEF5hhcYUD2bq/6as/r/2BfnWfsRw/P9IW2eCVZRYS7CXEOc3hgrjUbxL+N18qN/y+4e2IRujGwJjB/BGRl81h6i3cLF/ov4SSGBZ7PPsWPHxCs7O6VLPKGBZzIHlwa5OclsbzorKjW6RAWZY8tuToHGDqdS/tPwt0/YHt14DZzhU/5ggkdFw1yXrUovJh9m+iRbizwBuuj4hn70UN7+zwPz/TbzoD57t0foXjFfCbmWxHPLdz/uP6ejNfKjX3jD/qGvbKC041YzhIGZE9o7fBGP/zeHjCYALbfaaDZq2/YHhw4zHsqZiKBEt6PqJihcPfWafGFFSsWOXVbXY8bXMZz+LZ7kfgfxANul3F2YQzvcIUxzDsvGiS8apN4Ifs21SO7bwSzqmfsRQ8d2OdpeKLfso3XDTZEyFH1iZDdO0t0UhpxvvVH6Q6dFTneBIbCDrRX9Bb3r4oXy4194q/6hruG7diBj90aXAwS1nKyVxtY+B7cHvQf/Lpw986Dq69iJoI9GOF/r7lPQ3K/jrNFjibCO9Iazcxxri6oo+LCuBYXRlr54i7yKbxqk3gh+zbUY/hzgMtiU+n7veihA/s8DU/0W2YP5NUql4c/cMAFa15agdIFDWCxSXfo9nQOY//Qhms99BX3r4oXy4294s/6hm1N52PiH34gXK1INEPjWrMFEO94hr3r0oYe7/MGVcdfuOOY4I6ieEqaRYOBYlpMHebfEBR2JdnB5cXpBPBxh3VCPyQ/hwuMC2VkbuA5I1P6HPx49wz8WlpQBVDcGZVdL7bmdGjWkMnZQdya4zwAEt0X9JuzS+F7kS/Ksx3BRVgY415usc1YJW8ZqnnpyZvVvY59i36RvzxqaSa8QsjaS6arPN38PVkbDz4t0NGjTNYHrmxjulUTWq9Zucr0UEeXeVnq2qfs+WXP3AWNpn7bhrfI8wKO5VNLkKQ1Xkff9EQNRrApW7DOR+47gklZIZXco5unVDLl8zZv9SMxLX8tf8au8qKKp8mNevFclgfl9pf6cyvf0PEHvedM5otK9MsORS43oOcxyVCwixUNeEc4z47E+xhqGMS2VgGB1jWbM0RzCic0tM+MxdR3kIv8aN6GHtkSIdlc8d+pnPzYLrMLKtzHlfe+m1Lnx/9/B/gmcMIF6OO4hIkHsCHoCNYRBoXkE2avv+9g6d1gRgisdxNw/E84r9bkrqJZRybK44P+k9BIBefwCcvDFYb4PXkswfK4IbmoqU5IgHQZnwP8hCuaLNKZpWTwjF8/3q6TJ3T3J1h8ocADXR2WZGgNXkp5C9Cxr8wvxMsnxLlt4LG9oi7ZJyDq+6hFN3uPzMZ6epTJeiZHDN7R4hOs2wwI2VssoOPNRpke6uqylX2mAO+qOOA97cY0oh0X00tTv23Nm84zPcgQff22yc8O1NM3O1GrOOWJv5/G97J5Gyxat9+42Kj9TU+maAGiegxc/j2SpTLZreK+o7yo5GlyoyqeVbmlzP7d+obETmWxrXpO3NSx0RNxvvY4yOZ2VkMc4B6Kbzm5M6zHPPC8hXRo7TmgfeYDJuqgwP/8iQ5AK7PEmg4Mx5BTcnH2oHifbWFBRy6sv+ZiURZwvle6B8NCLnp2l8hOp+zs9V9CX30wIrR1dg9twGusKpooE9GWKeJB7z/fLoRuRYbxbgZ9ALfySZI8LyOHjKpf9uxo1XhXmOhiLz4bLozTvA7xHuGSah3Kg1aHl0reArTsK/ELAfYqsOhvY4e7DwIjGhiiTRcw22vRVftNeCdqPZb5MKU5S2YpHHrR4Y7Lmhst8BI91NRlO/vgUi/6uDQO0JPtZjSYn4826Q6tqd92wDtpFeUqkdq+Wwl+4gaX+BQI2M+3iztZnTyljH/6vahH2kYIEv1p+GtZ3HeTF9U8TW5UxnNFbqmyP35HuvMNuZ2ksa16Tlas+HA84/2Uv7u3pEsz3kVZv+U/Xpx051Y6ajnZA0zNXJjwp7zVRHeti9Mql2iySi72uvl94+00c+TGN0OZs12WtLYPzUIuuT7VFdth4ZOkO40ymnVlSo8D2TW4Y4uPZs9sK3+CuNI9smM5D6wvnhDZK4AkfgVQpkPJ8CkbNh3W12EGOrxU8srULrevyi9kSNo6CalP9L01BIIulXSr/KZEj3o+nE12VFYxCZTpQV+XHdlHGQdNaHDfSmdJ2vltO95QMnxd33erEc3PqN4gqcxTDeI/I0IHcd8qL9bgaXKjBs18bqmyf0++oRnblc8Zv8nkWfCVaffmwQeq04KG9XAXcNJ+a6yjllOM+w6krSYKyYR1XCGKbsMWKSyIso6Sq7Jx4fKpksUMpepv51FIctEOSxzkLKPZWKZ8myF2QjdDVz73A+U6RAcSHYQmgvH8UV+HdXmp5JWg1L4KvygiauucIvnpMefHMPU9XboVflOqx9o+vCMfop0r9KCty67so4oDtrPToCHqMJ+IW/ptK96QXxizMtXxXbHPX3AXyfyMlrwiGsR/VoQO4r5NXqzD0+RGPZpibqmyf1++oRnbyuekpzJYyLDW+4SNw5BMPAp8koLmzEuudpP8jcCPxnz/wB6s/ITkkryFlf4I0QDscAeTzwEJ9g7wFz/YBWRyx932ip/+HH5CWPGGHFl6zNMzCjxz79d+o4pdD9v030t6UkVfMXez18ho2g1lYklvBKfEOVInPC8n5L7eJCddccakejrOxF2fTIfAF/TPAbTRoZ69RF4DDXlF8Oo+I9u0jI/oF4pdM+3JSmfG1HTL/aaprACU5GURKwV1HfXaA2EguMxG+rrsxj7KOLA1aYg6THaDdG7kkwy+hxqylvttK97BGsRdJ52/+hwEeH8DfQt9fje31sW5d2pL78xeV5anVLoufB/PvdDFJOwk7lvlReEZTG7sKp7F3FJl/358Qx1fs+rnTPjxdhRrvedfiAbIzKe9xUT4FLEPznJAe/fltugJ4nFhAfbK2ix84rFjJyD0aPYxpMNmHljs54+ZvKyH59Nr2LAVVYIN+9OCWJ4Dlp/2pUluwrr6iDCP6NhsdAPHYmQIa6uR7CR5OU3XaiJTYagwckLfsfhRNeou3I6JE+koppsshL3qsJm91lXyFolKZFuBBh8JoiI6phXkih4t+ats3FBWTD5XvP5Ej2At4Qg2U5TJaNtQS5ed2EcnDlwtGgUdXjAPWXyD49Kc0NBvW/NGug59JdTnvp/e79bTN9P5FOZjX1gEIimwSNLLvao8pdJ1/ntxZ2xD+7hvmxe5jCY3NsiNjWiK9s/7cxe+oRlfFc9JC6LL11fCg791ld94xm988hNrVtCwnxH+tb95oNe6KsjoBpB/LV76HNFxVVv+CZLfk9ijcfeli28lzQYysWHWDMHin6ooXpNn25cOm/FSyaukqcmnCLXN1XTpkGM5jUay2isI2PcEqtQto91al3XtoxUHKrkkdpD4WlO/7YJ3GY26+mb8NgtcGMQ3wOrQUfusilbV963jvou8qMXT5MY+aHbvG+3iq5RvHqzVRU8B+SbhTXG5QR6v9Eu1BgZ9wcRBfWBCf2wnxJnsinMArw7jDwbPBm3RedfktId+ZAqammB9wQtU/86AgcE/DhMHzcB2pFP6R/Us+te2yZ/5uzgtYfzB4JlI/to2yc7dmoKmJn63PWdg8Ddg4qAF/uzPyDeH8QeDZ4L5m+Tz/wCpU4MImsts7AAAAABJRU5ErkJggg==" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:2.448in; padding:0; " class="fr2" id="graphics23"><img style="height:0.5029cm;width:6.2179cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:5.1555in; padding:0; " class="fr2" id="graphics24"><img style="height:0.5029cm;width:13.095cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P68"><a id="a__Error_de_los_residuos_de_Y"><span /></a>Error de los residuos de Y</h3><p class="P55">El error de los residuos de la variable dependiente, se calculó a partir de la siguiente ecuación:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.802in; padding:0; " class="fr2" id="graphics25"><img style="height:0.5029cm;width:2.0371cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación5" />6</span><span class="T10">. Cálculo del error de los residuos.</span></p><p class="P29">Donde </p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:4.0307in; padding:0; " class="fr2" id="graphics26"><img style="height:0.5029cm;width:10.238cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
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		--><span style="height:0.198in;width:5.8744in; padding:0; " class="fr2" id="graphics28"><img style="height:0.5029cm;width:14.921cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P64"><a id="a__Análisis_de_varianza"><span /></a>Análisis de varianza</h2><p class="Standard">El análisis de varianza, en un modelo de regresión lineal, contempla la suma de cuadrados, los grados de libertad y el cuadrado medio de la regresión, el error o los residuos y el total. También incorpora el estadístico F y su valor de probabilidad (Valor-p).</p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><h3 class="P68"><a id="a__Suma_de_Cuadrados_de_la_Regresión"><span /></a>Suma de Cuadrados de la Regresión</h3><p class="P55">Para obtener la suma de los cuadrados de la regresión, se partió a través de la siguiente ecuación:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.448in;width:2.1043in; padding:0; " class="fr2" id="graphics29"><img style="height:1.1379cm;width:5.3449cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación6" />7</span><span class="T10">. Cálculo de la suma de cuadrados de la regresión</span>.</p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.1244in; padding:0; " class="fr2" id="graphics30"><img style="height:0.5029cm;width:7.936cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.448in; padding:0; " class="fr2" id="graphics31"><img style="height:0.5029cm;width:6.2179cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
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		--><span style="height:0.198in;width:5.4472in; padding:0; " class="fr2" id="graphics33"><img style="height:0.5029cm;width:13.8359cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P55"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.2602in; padding:0; " class="fr2" id="graphics34"><img style="height:0.5029cm;width:5.7409cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P68"><a id="a__Suma_de_Cuadrado_de_los_Residuos_o_errores"><span /></a>Suma de Cuadrado de los Residuos o errores</h3><p class="Standard">En el caso de suma de cuadrado de los residuos o errores, esta se obtuvo por medio de la ecuación que se presenta a continuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:1.2083in; padding:0; " class="fr2" id="graphics35"><img style="height:0.5029cm;width:3.0691cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación7" />8</span><span class="T10">. Cálculo de la suma de cuadrado de los residuos.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.8535in; padding:0; " class="fr2" id="graphics36"><img style="height:0.5029cm;width:9.7879cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.2602in; padding:0; " class="fr2" id="graphics37"><img style="height:0.5029cm;width:5.7409cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.1244in; padding:0; " class="fr2" id="graphics38"><img style="height:0.5029cm;width:7.936cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P68"><a id="a__Suma_de_Cuadrado_Total"><span /></a>Suma de Cuadrado Total</h3><p class="P55">Para estimar la el valor de la suma de cuadrado total, se procedió a utilizar la siguiente ecuación:</p><!--Next 'div' was a 'text:p'.--><div class="P58"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4063in;width:1.5626in; padding:0; " class="fr2" id="graphics39"><img style="height:1.032cm;width:3.969cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAJYAAAAnCAYAAADtl7EyAAAACXBIWXMAAA7EAAAOxwG+Bl3YAAAHHUlEQVR4nO1cTUsbXRg9A/6IEHSR1pRSshIRtLuKYFJThIrbIsgIgppNFoHiQoQs3PgBgoMQupUIpbG18KK7JlDElUhpbLMwiP/ivvfemUwmk8nkzpgPr52z0cz3zD3zPOc+50kGCCEIEKDTGOj3BQR4mgiIFeABuCRLkT1o5udxfKuoiANKQCxZUTkhr98cI3aYQ/rPOqLZ27a7qHTbg0koXk5zml4giV/vUS7MYBi2fc8uKKkMMp1pUBZL2NTeIa6GgoglI260dRItjKFcyemDPblMtgsZpK6GsH2+gbWInQAaYYPuB/GtnEIYiSPrmD/fIA3HnlTpOvMTFetDmJ8K8Q8BsWQDHeQP2UEaJawRJKSs7b4nRzSCpVZP8LYwQxqiy+Q7bMdKuLYdh0W8Yu3z3ArI1ojSSEIjGkVmlB+Hd0R5o+FFRSVxe+TCPdnZLmEikzVJHRBLKtABXD0G6AA2DS4d/E+ZnySaPUY0HWYksaykxCvk4Lw9S6GUQLXtDRLq0U+tn4cvz5ipzorTdAZHySx+qCHzmqQkFk8FAppCBH50R99QucARHfD53ZDj6mF1Q/lWppoov4el6Rxpd1/DU2OYoM+xiCp+05QWj9CFZ19apNSQ8jY5RFKFC9yo9YjINNhm1CAVi4L7YfygkU9KYg2ry9A1BftUn4mIH4G++cna/hLh7x0lwSA+RlpvEt9agUqJpS2u45VdE9kRGcV8jKbDq1sc/XePtakL8pqmQfayOe03/HwQuLpDmf3PFtC0mcizfzJQsuAFUZYOGaQkllVTFFFCIj1qC/3i+8uEmz9VIDaGqOtWI8rB4TjRKEFS+5dYc30uRhSixCqWL7BT0NNsy0j3LIwJ/KxHNy7eVcdNJSUWGjUCfUNfR7PEmuPb76+/rdftt5QUFt3kAh6FwJ7hMY4yjTrJGbe4/kv/uERNBnmJBaumAIrZfexMtQn9DQgpL16CPDliMZ2zWOUayZs8GMdH1Vm7NWIIr56130pqYjGYmoK+SY5Tbdd9c0q82xfYQTRpnCZckiWjaCr6gp1+N0oLc6PtiSig8WqQnlhcU5y/J1dMb105TbWfEOwax4bT9B6uWDpz0Ehs9vZ52j4DviSf8+KnF9N4Op4AsdCkt0Sm2p1Ba6+sK6czdCGfwdnSFivBJLAC4qSRaHrcpASKTVsXspmx5drbPrd78rVwi4nkcrO144CnQSw06i1tUcOsY4W4w3DxyroDOptNjZPU4hecqpb7o9N+va63ByWPln1QMfuxCjRlip6a17fovRbE7u3JEIuhrrdKSCTDzDgV1lu+4OKVdfOc5cw6iSZPjPu7B7NT2kNMdDvCx4SggVjcybbn3FgLZ/tRol7DAdVbH7RRNn32fhgvPhp/Ls1eWTfBojOZYsbwAhfqB4WcIhx5PMLsbqhseOKAQax6JXrCrGXoy46So5KQygB/o6s8NRSzGSw996G3PPpoTl5Z18GM4cpM10/Duxt87KcTi3tQ7B9rKPeYgx8RrJaPX70l6qO18sq6cmMSQSdWJMyFXZHVglq2RnQSgl6d7zTMXooVch0x9JZnywdiPpqLV/avw0iFFm3CBiLCH2AXp+y9iIaWe8pf4HRrxOPLIuCjuXhl/zrq4p0/pFGzLiPkjj928IIiReadr9qSdx/NDQ+L0kpkQaqvU9nKDfQtr6wQRHSLxKkQ1xl0OxUa51ilqYwd48H3IOqjueFhUZpUclK94AO8aa48q0+nOcJ4xQQXHfTYc+NhmtNsQ7jiBHw6zgYtdYdoq3UtSdH9VHij7esFvYr/UoknHy1AAwbK5dtGDcJnPuDRIj1pbDU5CpVqLy02hrdsdsSLgpRIu3TQIpet1/VrMHhf+C3ViV4dfiu8+WgBGjHw+xf7owt2wLADagVBEyPK7ByIlmfO+j2+rlod9BG0XtcP6A5/kd6DkxkrBq8+WgA7BtYEq7bx6XH6gKv4rdGI9pISz/KQ3db1Gszh1wSb3FpD3hreY4G4V8hnWCWk2PfZCiPi63oJXleyfbskQF8gTize5AWoKQft5LauV+BGae/8ugDuECOWMWgM2vdLHEyOiK3rGTpZWgjQCYgRy83w7JEZ6ga9tMBSoCxdGP1DvYOlsY+Mo2nS5h/y92OZpYV+zkRlgF6Uvk7l8A0LSORL2ExWkXg5C3Ie1muPvqwvZ0hOrIeVFswf15Cm3+whqH3NnvWOGYuSy3or89kF4b1nsbBQP7sIpCbWQ0sLvDhM39inTyoLzBapuk1VcxgmOth7Jy+xjJYV9dBnacH4ggHmOn9pjxrGDL4enWoOQ2fbquUklnUmurjAKuS+nf+JaLhjlyUDmqJT5Y7ovQCDeBG5x05yn2DX4Te2PEJCYhmlhX5fhpSo+59mg4HZ0MhsvarzD7f5gITECuwW/2BtUTkcNCzrzvP8H9XPHy/CNcxLAAAAAElFTkSuQmCC" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación8" />9</span><span class="T10">. Cálculo de la suma de cuadrado total.</span></p><p class="P30"> </p><p class="P30"> </p><p class="P30">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.3437in; padding:0; " class="fr2" id="graphics40"><img style="height:0.5029cm;width:5.953cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:5.4472in; padding:0; " class="fr2" id="graphics41"><img style="height:0.5029cm;width:13.8359cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.2602in; padding:0; " class="fr2" id="graphics42"><img style="height:0.5029cm;width:5.7409cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAANkAAAATCAYAAAAdzaikAAAACXBIWXMAAA7EAAAOyQEghXBWAAAGw0lEQVR4nO1bO3LqShA9qmIpEgHFCsQKhBMiUmcilBIyQjISCKXMKRGJYQXSCigCo73M657R/8s1VuHnUkfXoJnuPv1vcUdCCAw00ED90ejVAgw00F+nIcgGGqhn+v8G2WUltLkP+yzgWdBeLc5P0GWlCVIJpBSEZ/Wk00WstDkUm7+D3W+mlwdZdJgJww3pXyb29wCOroze9LkichT2RnOPtfUaufsgy7tjfzVwW/SplKV5gqJL22Ji9MjmpaQSCX5JEnl5kOnOB/ZHA24Y4vgZwaFoyn9+XH6UAowz/hzX/R3C0V8O4M/SHbfQ7N/5oy9cMcVC75nPq0jqZ2L5S5LIy4NMOZYN2/bhHz8ROY4g28fBQ0C9VT3B8oT2hwpYRuwc5hLrnp0/+jwitDew8Pos3wvpjhYI59VSpERBFonDjCtJ0qNfkPTsJlWLoLFaZOdaiVq6e+BAbzLo5QTfXkAsAN8/4jNyIItZ9IkjlviIHS5tH9P7IhTl5vtLuhgHzAwXYaoL0jNVuUr6NPJJ8Cm3sdms85DelTN0336KcLoonWmSq+nebjnutxAml8t4rmXKz2fpbFh7xxM4JfxabVjVwT6fge0X1m32gk3doQdiCsWi7LttuPxLDLTbow670WH2DnwInHca6XHAan7DQgisDzMYlcqSJ11zAoFn80X0RYV9sqbytCCY/KxlvN8KDqc7gXa+kQLXPP+zuHHvnSpf0mXLfwqOLNJlh9Xxigl9L+4raKTnnW/JGUC2oAEBGh3EzOCAfwPec3eeVpgRu40go2snjJOKI593gbSFVYZ4P7yxgRoUV2fCdMmhZDD369xDTXLFiajhznY5LuJETjC1d9BulNyEp0nHOF3IuSwZeHNfOaysdBwYp3Fsh+/jJJPkbYP7/kq2kMIib69Tow4Zz8wP44Bh7AJLyUFXcXeoe2fYPjEf6w/igqrfNMZAhz0asBs5QaCYkvOG/o2AUQ9cbqHAdNORiZ+lSFDngqUsV7q2sCF8d4eL4wmQJ9gLr/C0MTGBa/1NKugClHXRE10o80ySjEoYUWQjadl5xpMGizPWZcfVz8ZG12Hl8cEEd6GyliWyhlU+zxktdWRdG08hwlsWxmVKz3j5xrfYHjfLVY/AQ3LIeYV1WaQbTInr8Yvc3hK6MSEpXJwu5AcsmuVpiapP4eQE4J89RIct+RUHbd5eNhJTV3UwwOLlg0bKkceO28MAiX7iyjLlYG3Hxar1m7oY6LRHA3ZqJuPWLOSyHkcgMaQCA3vTNvn8QLso+U5TIa31HqbPQq4xuZqYrCsnuqlBF3OfLVAuMpWf0+x8kuV9Ds2H+vkLAylyK/T0zjo91Hlz/1ZoZSTPxslbnbHPufsqy4gH5PqGHHIeKwU3t4+pM+kOgvON2jqN+gpbpFn5aZwyXmZ+s3PZ4bhcI8jxKOLCd+aDpuaZIgPSL0ugD9unMwYe0J+DvQa7USoYMmevKlZHP9AuMl+ax9IBXH/D0nThbt85p6fz2D/fmdcl3tgt08sSI8XKxZuo6muCtjtzlGyy8gsachyXDdakQM32S2ZFMppVCLoOub4hh3Ty5UfOiQ9im8eDiTMwOYhsI2cTTpJCfxYnJZBqVc/poC1m2wk+gnyVrcGFkkL6UcfmkBOoubyXktcD9umKgUftUYPdKBEMeQOn2YD75p0YB14vmygJSKFc6drb0hQulUfeftVmqjCbpWT5Bo+8xTsLuvBihcA7p+BlRrqsZuJrvaFvQ+Q7KgbotMgtAsp35kkfy/PZ64f4HR493x4cGc/sJTSU4+3GCLxxp1z/Lody8tBOERSreC4MLDVDzL7W6aBfaM/1bnlacSoTzyvbSU2XU4cLtZfRAYSLqOKSzOLs/BG4+kwX8nCsy2P26Y6BRbv+LdiNGlub0IWhHWXk9hFgPAirLcw7Dm+BSBTWnQ1slwbXmheyyXdzTR4UvHXiIden8kzTJo0YCuRCe6Q+yDJh7CyuoalNEvGN9qYwZIlXbYDcKFktrUWBLM0729QiGNDc7HzrOzxqKza2K+YxT5bjPqEhm3TTrtxeS921datc35CDEww50plbHi3X8sSzGTta6PvpebWxS4LAQrs8XTgxqfnK5TuSpcXTuOSriw6etdL7PV1+1m2fx2LAaNG/DbtRbdsXl7w+ibeF9a8y+BcJTf8zQH1XkKzwt46yLlU+1TuaZZHfdrfF38CL3/UVjlgByjK0y/UNOXhmkF8L1D1Wkaly/EmcHnjmWVxqdei0z2Mx8M98Y/oFL6MHGuhv0xBkAw3UMw1BNtBAPdMQZAMN1DP9B0ga+amQMjNmAAAAAElFTkSuQmCC" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P68"><a id="a__Cuadrado_Medio_de_la_Regresión"><span /></a>Cuadrado Medio de la Regresión</h3><p class="Standard">La suma de cuadrado medio de la regresión, se obtuvo a través del cociente entre la suma de cuadrado de la regresión y los grados de libertad utilizados. Matemáticamente, se puede expresar de la siguiente manera:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4063in;width:0.8543in; padding:0; " class="fr2" id="graphics43"><img style="height:1.032cm;width:2.1699cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAFIAAAAnCAYAAACcwx/pAAAACXBIWXMAAA7FAAAOxwF1Wo59AAAEuUlEQVR4nO1az2saWxg9A/4RQerCNpZHcCUSiN0lPGjSWAKR7gNlCoU0brIQQheh4MJNXguFDAF526BQal8MPJJdFYpkJaXU9M3CIv4X993v3vlx1cz4o61JnJ6Fw9y56Hjmu993zncnxBjDb/w4Qtd9A7OCQBFZ3d1ia6W+wfgmWpV1zAOaM3ZmMO1pffg8BQEhssv+SueQbQKpXB4f9TnNHjtOJxVy3HnIbIMVEnz8gj2LvoHxR9iTREIwiDQbOCZyEMGTP+eswTltp1LEjjKtumuRSNFXSFijCW0jA4aHCfghGERGw4jzQw1tZJcN3Dd1ttofXeYH9spa9nq2dwmvFora6pCfCAaRPKoOj5aYIfJeHWvROvSjIjtcccmqvi1zoiGicXdl/F8ICJEcK7rGzKTMd/zUePoSC+f7bCcKkS+/frHmDcmFXggOkQI8Ms1tBkFmG8f/drGjU87s4HNTzkjFwhN988wTeWm8ZLHWhlWBCWEsUMLkxMXv2YXnqjGIvPlguYM9U8dATu3DzBPZarWBUgPVQkIWmLP3TmV2c+Gc9igdYdlmG8bpBQ5XqEJzKfSC500+LzbC78w4kXbukwWGQ/phRyO6mNf3tZMWCfY30EpwfXNGzZmWpiR5lO0gRsXL+q4ZJ3JQK/qBZA4reF0lsd7AQi4C5MuInW7jJFPHKyunzjiRPxP0UHRhM23BPg9XXw4SOcRniuSdbzuXuB6Dq8cUiyUQwcH5PqTEmAVcsHclspnJAYmkEDmaz5zXn+OgopKlwE7kFvSjWSKRw+xA1Cm1sltwiBzdZ5LmiiAVb6PG5ze/dbnYpS/mpPNI1jNLMEoU0UvYmMAh3GhE17WP5vqVlySR4/jMswavWos4SQNrTXeJV3dlNTtAWQ5kkkO119XoTw8eGNLWmjYEkeP4zMtv37mNSjraqtbqUHeFPwjKh2F8XpbjkzqEcSvtTUFoPJ/ZZf9U2kil+bx7d/g5j8gvDTx7wZdyLs//fAMPxDy1XXW90KJbU9lLCY3lM0Vfj5P0mkgKI8U/a826FKjcs14an6zIXsSj6KS39HOXNjOLU1n6obF85n8dbpkW8TeRZLpT7bxabbXl05+wgyJxa5f26D6zekrVeFOe2M1SLpWkjpQaizB5fry9EMVmFJ9JQlxuHJVROFsnwrVDk4txMZGWo+zzEWr596jqahfa26NO7Z/+Yjg60t9nSrKZ7nXVbzn6e9SbDzVnezu1KXhtf49688Hv//UmO14miXgH9z2K6JSaFt4e9VaAiiwd42HP3uR0iPTxqLcBwoRwpNLegTAdIn086vWiX7Mu4SD3HdnKoqJRpQkh+AVCcPuRQidLayxbgV0IUvOUgp4rkWcbFv8mTGCJtPsL9AqL1U91ZF9P5FGTRgx650dCQIm0zYPaE7AjL4KFu+5MOz8Oc2vBJNIqflDljBN5ap/AzY/673d/RoC6vdITeW5Dh0Ba+N1DdWvFRTCJ5CpiL1Pmltfaps1It0UWuDfy5A6BUaJXXLaAo6tJJASPSFGtP+HJeZF7fbUXQMfByjzMOtsIGJFWV4sTtqfkQbvhkso9nnB7JHBEur65580L9G8rj4+AEYlf5rL+B3TrWfN0J0fuAAAAAElFTkSuQmCC" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78">Ecuación <a id="refEcuación9" />10. Cálculo del cuadrado medio de la regresión.</p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.6972in; padding:0; " class="fr2" id="graphics44"><img style="height:0.5029cm;width:9.3909cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P30"> <!--Next '
			span' is a draw:frame.
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			span' is a draw:frame.
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			span' is a draw:frame.
		--><span style="height:0.4063in;width:0.8543in; padding:0; " class="fr2" id="graphics47"><img style="height:1.032cm;width:2.1699cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación10" />11</span><span class="T10">. Cálculo del cuadrado medio de los residuos.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:2.1252in; padding:0; " class="fr2" id="graphics50"><img style="height:0.5029cm;width:5.398cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P32"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard">Estadístico F</p><p class="P33"> </p><p class="Standard"><span class="T29">(Anderson, Sweeney, &amp; Williams, 2008)</span>, afirman que la prueba F, sirve para probar la significancia en la regresión y que además, que cuando se tiene una sola variable independiente, la prueba F, lleva a la misma conclusión que la prueba t.</p><p class="Standard"> </p><p class="Standard">El estadístico F, se obtuvo a través de la relación del valor del cuadrado medio de la regresión y el valor del cuadrado medio de los residuos, a través de la siguiente expresión:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
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		--><span style="height:0.4063in;width:0.6563in; padding:0; " class="fr2" id="graphics51"><img style="height:1.032cm;width:1.667cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación11" />12</span><span class="T10">. Cálculo del estadístico de prueba F.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.0311in; padding:0; " class="fr2" id="graphics52"><img style="height:0.5029cm;width:5.159cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:3.6972in; padding:0; " class="fr2" id="graphics53"><img style="height:0.5029cm;width:9.3909cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:4.4264in; padding:0; " class="fr2" id="graphics54"><img style="height:0.5029cm;width:11.2431cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="Standard">Para la aceptación de la prueba estadística F, el valor del estadístico F calculado, tiene que ser mayor que el valor del estadístico F crítico o teórico, el cual se establece con un grado de libertad en el numerador y <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.3854in; padding:0; " class="fr3" id="graphics55"><img style="height:0.5029cm;width:0.9789cm;" alt="" src="data:image/*;base64,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" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;"> grados de libertad en el denominador, con un nivel de confianza del 95%.</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P65"><a id="a__Error_típico_de_los_coeficientes_beta"><span /></a>Error típico de los coeficientes beta</h2><h3 class="P69"><a id="a__Error_típico_de_la_constante"><span /></a>Error típico de la constante</h3><p class="P55"> </p><p class="Standard">El error típico del valor estimado de la constante, se determinó a través de la siguiente expresión:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.7811in;width:1.802in; padding:0; " class="fr2" id="graphics56"><img style="height:1.984cm;width:4.5771cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación12" />13</span><span class="T10">. Cálculo del error típico de la constante.</span></p><p class="P32"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard">Error típico de la pendiente</p><p class="Standard"> </p><p class="Standard">El error típico del valor estimado de la constante, se determinó a través de la siguiente expresión:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.7811in;width:1.802in; padding:0; " class="fr2" id="graphics57"><img style="height:1.984cm;width:4.5771cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación13" />14</span><span class="T10">. Cálculo del error típico de la pendiente.</span></p><p class="P29">Dónde:</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2291in;width:3.2492in; padding:0; " class="fr2" id="graphics58"><img style="height:0.5819cm;width:8.253cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2291in;width:3.2598in; padding:0; " class="fr2" id="graphics59"><img style="height:0.5819cm;width:8.2799cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P64"><a id="a__Estadísticos_t_calculados"><span /></a>Estadísticos t calculados</h2><!--Next 'div' was a 'text:p'.--><div class="Standard">En un modelo de regresión lineal simple, si <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.1146in; padding:0; " class="fr3" id="graphics60"><img style="height:0.5029cm;width:0.2911cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAAsAAAATCAYAAABGKffQAAAACXBIWXMAAA7EAAAOyQEghXBWAAABA0lEQVR4nM2SMW6EMBBF/0gchUkR7QnYE5htUtFuh0u72W5LDgCl06Wl2iZwAvYE0TbmLhM7IBGyq4gqykiWRtbz+P9vJyKCrZVsJv8G7jVJ/jr1ZSdwakSzZ9hr3MlQ+2GBlfOoPxht4QMIAlKYt1patth1A0wK+iYjpUORib352Ic1SnOMoMyHf2hODwUyW6E5seDIuJ0X8N5gauhcWsmZZ90L+CCNXi5fJku8qF/SiKCmCs++Q8k5Lr2DUg/hYGafA+Hq6HqsM+GqwUkZCVbXmns9RTbMGiejLd5HEw8vkzWRTDLXkcW3uLLGkzhR8/TEiZBbR0JmCHLu/f27X7elPgHGUGVF0rsWoQAAAABJRU5ErkJggg==" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;"> y </div> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.1043in; padding:0; " class="fr3" id="graphics61"><img style="height:0.5029cm;width:0.2649cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAAoAAAATCAYAAACp65zuAAAACXBIWXMAAA7MAAAOyQHM1vI7AAAA4UlEQVR4nMXQMRKCMBAF0J8ZjkIsHE+gJ9hUVLZ2oSQHsPQAUIaOlioVOYEewQbusgaYcRRwpHHcKtm82exuxMxYE9Eq9SPYFXyQBrf+ts/RXjPEgOiKA0szZEO6DTDORJXXIQnk1Yj6xzirkNcS9bHFNYtFNCbP0Ebh3vaX8auuOMHsGnBALz2SSDRYOQ9LBPiUZX0MbdB8GAoSysEnjtVl++x1PjUl0FBQSqPhd7S4Ht1Y0AS9Q+9QhpoNTckEelcOe5TLboQ+FazK/mQg0w3YzssOkCwLth9KzXr8En+ED0+wTHZ9sq6TAAAAAElFTkSuQmCC" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:-0.2911cm;"> están relacionadas linealmente, entonces el coeficiente de la pendiente es distinto de cero. El objetivo de esta prueba, es determinar si se puede concluir si los coeficientes betas son distintos de cero. <span class="T29">(Anderson, Sweeney, &amp; Williams, 2008)</span>.</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h3 class="P68"><a id="a__Estadístico_t_de_la_constante"><span /></a>Estadístico t de la constante</h3><p class="Standard">El estadístico t de la constante, se obtuvo a partir del coeficiente estimado de la constante, dividido entre su error típico ha como se muestra en la siguiente ecuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4791in;width:0.6146in; padding:0; " class="fr2" id="graphics62"><img style="height:1.2169cm;width:1.5611cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación14" />15</span><span class="T10">. Cálculo del estadístico t para la constante.</span></p><h3 class="P70"><a id="a__Estadístico_t_de_la_pendiente"><span /></a>Estadístico t de la pendiente</h3><p class="Standard">Para estimar el valor del estadístico t de la pendiente, se procedió a dividir el valor obtenido del coeficiente de la pendiente entre el valor de su error típico. La siguiente ecuación, presenta de manera matemática la forma de obtener el cálculo del estadístico t para la pendiente:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4791in;width:0.6146in; padding:0; " class="fr2" id="graphics63"><img style="height:1.2169cm;width:1.5611cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación15" />16</span><span class="T10">. Cálculo del estadístico t para la pendiente.</span></p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="Standard">Para la aceptación de la prueba estadística t, el valor del estadístico t calculado, tiene que ser mayor que el valor del estadístico t crítico o teórico, el cual se establece con un t<span class="T36">α</span><span class="T35">/2</span>, el cual se toma de la distribución t, con <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:0.3854in; padding:0; " class="fr3" id="graphics64"><img style="height:0.5029cm;width:0.9789cm;" alt="" src="data:image/*;base64,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" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;"> grados de libertad y un nivel de confianza del 95%.</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P64"><a id="a__Intervalos_de_los_coeficientes"><span /></a>Intervalos de los coeficientes</h2><p class="Standard">El intervalo, es el área en la cual se hayan comprendido los valores verdaderos de los parámetros poblacionales.</p><p class="Standard"> </p><p class="Standard">Para determinar el intervalo de cada uno de los coeficientes, con un 95% de confianza, se procedió de la siguiente manera:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:4.9681in; padding:0; " class="fr2" id="graphics65"><img style="height:0.5029cm;width:12.619cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación16" />17</span><span class="T10">. Cálculo del límite inferior del intervalo del parámetro</span>.</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2189in;width:4.9575in; padding:0; " class="fr2" id="graphics66"><img style="height:0.556cm;width:12.592cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación17" />18</span><span class="T10">. Cálculo del límite superior del intervalo del parámetro.</span></p><p class="P29">Donde</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:4.1244in; padding:0; " class="fr2" id="graphics67"><img style="height:0.5029cm;width:10.476cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2189in;width:4.1453in; padding:0; " class="fr2" id="graphics68"><img style="height:0.556cm;width:10.5291cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P64"><a id="a__Coeficiente_de_correlación_múltiple_o_lineal"><span /></a>Coeficiente de correlación múltiple o lineal</h2><p class="Standard">El coeficiente de correlación múltiple, determina el grado de relación lineal que existe entre la variable dependiente y la variable independiente. Este coeficiente, se obtuvo a partir de la siguiente ecuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.3752in;width:0.8854in; padding:0; " class="fr2" id="graphics69"><img style="height:0.953cm;width:2.2489cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación18" />19</span><span class="T10">. Cálculo del coeficiente de correlación múltiple.</span></p><p class="P29">Donde </p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.572in; padding:0; " class="fr2" id="graphics70"><img style="height:0.5029cm;width:9.0729cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:5.489in; padding:0; " class="fr2" id="graphics71"><img style="height:0.5029cm;width:13.9421cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:3.9681in; padding:0; " class="fr2" id="graphics73"><img style="height:0.5029cm;width:10.079cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="Standard"><span> </span></p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard">Para el cálculo del coeficiente de correlación múltiple, se hace necesario determinar el valor de la covarianza y el valor de la desviación estándar de cada una de las variables. Para determinar la covarianza, se utilizó la siguiente expresión:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.3854in;width:1.6457in; padding:0; " class="fr2" id="graphics74"><img style="height:0.9789cm;width:4.1801cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación19" />20</span><span class="T10">. Cálculo de la covarianza de X y Y.</span></p><p class="P55">En el caso de la desviación estándar de cada una de las variables, estas se determinaron a través de las siguientes ecuaciones:</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.5937in;width:1.4063in; padding:0; " class="fr2" id="graphics75"><img style="height:1.508cm;width:3.572cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación20" />21</span><span class="T10">. Cálculo de la desviación estándar de X</span>.</p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.5937in;width:1.3854in; padding:0; " class="fr2" id="graphics76"><img style="height:1.508cm;width:3.5189cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación21" />22</span><span class="T10">. Cálculo de la desviación estándar de Y.</span></p><h2 class="P63"><a id="a__Coeficiente_de_determinación_r2"><span /></a><span class="T11">Coeficiente de determinación r</span><span class="T16">2</span></h2><p class="Standard">El coeficiente de determinación, mide el grado de explicación de la variable independiente sobre la variable dependiente. Este coeficiente, se encuentra entre cero y uno. Para determinar el valor de este coeficiente, se utilizó la siguiente ecuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4063in;width:0.6563in; padding:0; " class="fr2" id="graphics77"><img style="height:1.032cm;width:1.667cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación22" />23</span><span class="T10">. Cálculo del coeficiente de determinación.</span></p><p class="P55">El ajuste del coeficiente de determinación, estuvo determinado por la siguiente expresión matemática:</p><!--Next 'div' was a 'text:p'.--><div class="P58"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.4063in;width:2.5in; padding:0; " class="fr2" id="graphics78"><img style="height:1.032cm;width:6.35cm;" alt="" src="data:image/*;base64,iVBORw0KGgoAAAANSUhEUgAAAPAAAAAnCAYAAAAxbsUFAAAACXBIWXMAAA7EAAAOxwG+Bl3YAAAG8ElEQVR4nO2cz0sbTRzGnwX/CBF7SKtFXnISEbS3ilCtKQXF60tAVihYc/EQEA9SyMGLbUEwFMJ7lQql6auFF71VoYgnkVJtc1CC/8W8M7ubNImzm8mP3ZnV7+diTDSZzeyz3x/z7PQwxkAQRDzp0T0AgiDahwRMEC1ymV9jg7kr2B8K2J6ApXMsJGCCUOUgz6yFY92jqIMETBAKOFH34iVYaQSLiffI6x6QBwmYiBX7K2k2/VE8GsNeycbUQR7VqDi3BLYxHEpKO2CvW26799Sori8JmIgJN+xtKovzTAF7SGP64zHepK4xPcSj4mEfnjzdxdHHE+xvDLMp6K1Lo4QETMSEXmu5WIAj5E3vqdQrMLvXwsEJOxK/J/swKP1fV/yZsyYfkZzFRXEGAzG6AJCAiXhROsGOI8QxrNq9zlP7X90Uejw14iM+V/zL0Y0yMkjARLz4XUZ9tD1ln5ya+AHmJ3s1DkwPJGAiVtyKtqUyczPjfjxO3OBtaovh3TqWEyGlwaUyKpn42a8bYELvRUNRwKesvnXudQBjVCvcPe7jnFSiLQ/AjzzhJEYwn9zF0dkxphPX2DwMSbySNeCjXBZWDmw8m8M3UYtrQE3AByf8RKlv27/Jv8CUff9SFmO4l3MybG2XCtiuey6i+nbCthj/rk1DTcDO4Ku/sXtRb5S+MLE0kTTALielyZw466U/4tdVJVqjxRpYtPCPIVKG0GoMCVF7T53PK47igl/tZSe/SV5YvzmZ2ihwgfOLUGIN84frLMr5IqKjJQHvr2Sxk4ow39fhPeUn/d+5fp6aSiKXgV7YwDlJzFjfPpSZ9TSPxyVbbnAQx/R1RO5gEheA18A/FMWNRVnAIiV7M+idKGJit/rwLSTbmkCP95RHs9e7AI9mjSe7iV5YpTmZeIHNZNa/Phavb2ZhrSyxOhHXlBAkXnNxBNzoLx3Mr0GkiKKucrp6v/NwX3e7buKRSNn86dz5osV76pgEeC357vaJHvV4ujcnvdbz1AOWKZ7g0p5ht79r0QRaYuf8omTBE7Hp9T9RpedtKs0a/aXConaR3eInjFhb43+VaLUDF1Pni2MS6MdqQucg5J7fTuZk4FE/cFbGhXgs/QvR3V1i4CJ+MjjLkjk3CyHxmk8PF5rV6C9166l1MPO65gF0HvUvf3GhJEd9/LRRjUfu+e1oTh72YRzf8bMETPlenFwRi/LgTGFd00qkjbor577i1sASf2ln6DCPmxb1OxxP1+fkCue/+Q9fAZ964p1FMpfFE+RYkIhZqUDR2QBcAd/yl3aKaWKKIV2fkwf466Hfa6f1kXcSvAbOYvFRgVEabTZuE6vp3RwaidB72rxWjG48XZ2TwNpeZEsNabNYfjoUIk5j8QOJ2GR6pP5SKTXeW576bg6V8XgjRO+tDu9pUK0Y6XhU50SNoNr+Mr+FzNCSe19tLRURv/6CywlZ99oQNHXMTXG69cj9pY144vW2LKkOPsyR6fCeesb4nf9usNxYd0Y6HpU5UeWG/Vu84pH8VZPlOglCxMWuDCIUmjnmukdtT8dbxjPE6dbCzQx84K+GIQ7m5w9D0+2O4bV7ZoxlFj5j3/ZxLsWNg8/8xBvDXvGOedeDHHMe3bO88vPi3SzbEdv2wFvGE6g43bqE37EoCdhJwbyBOykXvxLZmTIWV8psO0Q3lhZ4pL3I8i8r9UWkR+amjiqICLHg3mJ3Jy5GVfwdcw5hWF79morNnG6d0uRYlAQ8MDmK8dwuphPCNL/EB/wemYUTxyF0F3HSykmRHqVFbRXLJk61zCmt371MKcAxF5bl1Q1issyzmdOtg89UOBa1FFqkCjxVqWLfgyWixmOOGc7dSCF/hq4tXoO66q1bXhs9C2PYzF4jI2rraoPK7SMIZE1FpdWLNlA5FtpSh2gDvVu8ds0x53WwRWrs1pZiSx4u5pzwldc2/co490w1Lyck76PkdAsHEjDRBndji9f9LVe8439839VIVxdpnSYumphqZE638I+VBEy0T6y3eJXtZlmJtPWutUr9i6G+AJHJnG7hHysJmGgfTVu8dqXmrDrqapaFqpF2FM+rkfRP/Ws/G5a/l8a72EjARNto2+JVpeZs1fJau1xTF2krUdlFNO4+Patfi+3uXWwSAo6FBEy0icYtXoMcc6qW18SMtTq3y0QDTiyPiq753tyxs0lCfaQdtl7OgeX58/mFNHDLFBLsdOsIhWMhARNtonGL1yDHnIrl1ek+f8f8YQFso/K/wi4sft7uNDtLchs+7xWm003hWEjARDxp2zHnuriOROOtps4Vd2SJ+nc8+0LdtWaA040ETMSW9hxzf3zNTupcs3TUimfaFKcbCZiIN+045rrgsovC6abC/5yFuxUlI/8hAAAAAElFTkSuQmCC" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación23" />24</span><span class="T10">. Cálculo del coeficiente de determinación ajustado.</span></p><p class="Standard">Dónde:</p><!--Next 'div' was a 'text:p'.--><div class="Standard"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:2.6563in; padding:0; " class="fr2" id="graphics79"><img style="height:0.5029cm;width:6.747cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="Standard"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.322in; padding:0; " class="fr2" id="graphics80"><img style="height:0.5029cm;width:8.4379cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><h2 class="P64"><a id="a__El_error_típico"><span /></a>El error típico</h2><p class="P55">El error típico de la regresión, se determinó a través de la siguiente ecuación:</p><!--Next 'div' was a 'text:p'.--><div class="P58"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.5937in;width:1.2398in; padding:0; " class="fr2" id="graphics81"><img style="height:1.508cm;width:3.1491cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación24" />25</span><span class="T10">. Cálculo del error típico de la regresión.</span></p><p class="P30">Dónde:</p><!--Next 'div' was a 'text:p'.--><div class="P30"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.198in;width:3.1453in; padding:0; " class="fr2" id="graphics82"><img style="height:0.5029cm;width:7.9891cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="Standard"><span> Una vez obtenida la ecuación, se procedió a realizar una comparación de los últimos diez meses de los precios observados de las acciones, con los precios estimados a través de la ecuación obtenida. Así mismo, se procedió a realizar una proyección de los precios promedios mensuales de las acciones de Facebook, Inc., para los próximos diez meses.</span></p><p class="Standard"> </p><h2 class="P64"><a id="a__Análisis_y_procesamiento_de_datos"><span /></a>Análisis y procesamiento de datos</h2><p class="Standard">El procesamiento de los datos obtenidos y sus respectivos cálculos mediante las ecuaciones anteriores, se realizaron en el programa Microsoft Excel 2010, en donde también, se elaboración tablas y gráficos de salidas de datos.</p><p class="Standard"> </p><p class="Standard">También, para la comprobación de los cálculos del modelo de regresión lineal simple, estimado a través de las ecuaciones, se procedió a utilizar la herramienta de análisis de datos de Microsoft Excel, específicamente, la de regresión lineal.</p><p class="P29">Una vez procesados los datos y las salidas de los mismos, se procedió a elaborar el informe a través de Microsoft Word 2010.</p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="P10"> </p><p class="Standard"><span class="T5">Resultados y Análisis  </span></p><p class="P17"> </p><p class="Standard">En lo que se refiere al precio mensual de las acciones de la empresa Facebook, Inc., se puede apreciar en la siguiente tabla, que el intervalo de los precios de las acciones de la empresa, se encuentra entre $ 18.06, precio mínimo obtenido en el mes de agosto de 2012 y $ 173.74, precio máximo alcanzado en el mes de octubre de 2017; teniendo un rango en el  precio de $ 155.68. Así mismo, se puede apreciar que el precio promedio de las acciones, para el período observado, es de $ 83.58.</p><p class="Standard"> </p><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla0" />1</span><span class="T15">. Estadísticos de los precios de las acciones de Facebook, Inc., en el período de 1 de mayo de 2012 al 1 de octubre de 2017.</span></p><table border="0" cellspacing="0" cellpadding="0" class="Table1"><colgroup><col width="108" /><col width="73" /></colgroup><tr class="Table11"><td style="text-align:left;width:0.9688in; " class="Table1_A1"><p class="P41">Estadísticos</p></td><td style="text-align:left;width:0.659in; " class="Table1_B1"><p class="P41">Valor</p></td></tr><tr class="Table11"><td style="text-align:left;width:0.9688in; " class="Table1_A2"><p class="P37">Mínimo</p></td><td style="text-align:left;width:0.659in; " class="Table1_B2"><p class="P38">$18.06</p></td></tr><tr class="Table11"><td style="text-align:left;width:0.9688in; " class="Table1_A3"><p class="P37">Máximo</p></td><td style="text-align:left;width:0.659in; " class="Table1_B3"><p class="P38">$173.74</p></td></tr><tr class="Table11"><td style="text-align:left;width:0.9688in; " class="Table1_A3"><p class="P37">Rango</p></td><td style="text-align:left;width:0.659in; " class="Table1_B3"><p class="P38">$155.68</p></td></tr><tr class="Table11"><td style="text-align:left;width:0.9688in; " class="Table1_A5"><p class="P37">Promedio</p></td><td style="text-align:left;width:0.659in; " class="Table1_B5"><p class="P38">$83.58</p></td></tr></table><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">Por otra parte, al relacionar la variable precio con el tiempo, se observa una dispersión de los datos en la cual, se evidencia la existencia de una relación lineal de las variables, a como se puede apreciar en la siguiente ilustración:</p><p class="Standard"> </p><p class="P79"><span class="T15">Ilustración </span><span class="T15"><a id="refIlustración0" />1</span><span class="T15">. Dispersión de las variables precio y tiempo, en el período de 1 de mayo de 2012 al 1 de octubre de 2017.</span></p><!--Next 'div' was a 'text:p'.--><div class="P34"> <!--Next '
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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P31"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">La relación lineal que se puede apreciar en la ilustración anterior, muestra que hay relación lineal positiva, por lo cual, se espera que el coeficiente beta de la pendiente, de la ecuación de regresión lineal que se estime, sea mayor que cero, es decir, ser positivo.</p><p class="Standard"> </p><p class="Standard">Al estimar el valor del coeficiente de la pendiente, este alcanzo un valor de 2.28, siendo este mayor que cero. El valor de la pendiente indica, la variabilidad que tiene la variable precio ante un cambio en la variable tiempo, en meses. Por otra parte, el coeficiente de la constante estimado, fue de 7.36, este indica que cuando la variable independiente toma un valor de cero, el valor de la variable dependiente es de ese mismo valor.</p><p class="Standard"> </p><p class="Standard">El error típico de los coeficientes betas, tanto de la constante como de la pendiente, alcanzaron un valor de 2.04 y 0.05, respectivamente. Siendo evidente que el error típico del coeficiente de la pendiente es bajo y a su vez es menor que el de la constante, a como se puede apreciar en la siguiente tabla:</p><p class="Standard"> </p><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla1" />2</span><span class="T15">. Coeficientes, error típico e intervalo de los parámetros estimado.</span></p><table border="0" cellspacing="0" cellpadding="0" class="Table2"><colgroup><col width="214" /><col width="108" /><col width="108" /><col width="108" /><col width="115" /></colgroup><tr class="Table21"><td style="text-align:left;width:1.9299in; " class="Table2_A1"><p class="P48"> </p></td><td style="text-align:left;width:0.9729in; " class="Table2_B1"><p class="P44">Coeficientes</p></td><td style="text-align:left;width:0.9729in; " class="Table2_C1"><p class="P44">Error típico</p></td><td style="text-align:left;width:0.9729in; " class="Table2_C1"><p class="P44">Inferior 95%</p></td><td style="text-align:left;width:1.0326in; " class="Table2_E1"><p class="P44">Superior 95%</p></td></tr><tr class="Table21"><td style="text-align:left;width:1.9299in; " class="Table2_A2"><p class="P45">Intercepción o Constante</p></td><td style="text-align:left;width:0.9729in; " class="Table2_B2"><p class="P49">7.364246695</p></td><td style="text-align:left;width:0.9729in; " class="Table2_C2"><p class="P49">2.039829691</p></td><td style="text-align:left;width:0.9729in; " class="Table2_C2"><p class="P49">3.289218431</p></td><td style="text-align:left;width:1.0326in; " class="Table2_E2"><p class="P49">11.43927496</p></td></tr><tr class="Table23"><td style="text-align:left;width:1.9299in; " class="Table2_A3"><p class="P45">Variable Independiente (X)</p></td><td style="text-align:left;width:0.9729in; " class="Table2_B3"><p class="P49">2.275051895</p></td><td style="text-align:left;width:0.9729in; " class="Table2_A1"><p class="P49">0.052930538</p></td><td style="text-align:left;width:0.9729in; " class="Table2_A1"><p class="P49">2.169310988</p></td><td style="text-align:left;width:1.0326in; " class="Table2_E3"><p class="P49">2.380792801</p></td></tr></table><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard"> </p><p class="Standard">En la tabla anterior, se puede apreciar que el verdadero valor de la constante, se encuentra comprendido entre 3.29 y 11.44, mientras que el verdadero valor poblacional de la pendiente, se encuentra en un menor intervalo que va de 2.17 a 2.38, esto explica el bajo error típico del parámetro estimado del coeficiente de la pendiente (0.05).</p><p class="Standard"> </p><p class="Standard">Sin embargo, para determinar la significancia de los parámetros estimados de la constante y de la pendiente, se debe debía de realizar la prueba estadística t, la cual consiste en comparar el valor del estadístico t calculado y valor teórico de dicho estadístico.</p><p class="Standard"> </p><p class="Standard">La regla de decisión para la aceptación de los parámetros a partir del estadístico t, es que si el valor del estadístico t calculado es mayor que el valor del estadístico teórico de cada uno de los parámetros, entonces se aceptan, es decir, los coeficientes betas de los parámetros estimados son significantes en el modelo planteado.</p><p class="Standard"> </p><p class="Standard"> </p><p class="Standard"> </p><p class="P54">A como se puede observar en la siguiente tabla, los valores de los estadísticos t calculados para los coeficientes de los parámetros beta de la constante y de la pendiente, obtuvieron un valor de 3.61 y 42.98 respectivamente.</p><p class="P54"> </p><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla2" />3</span><span class="T15">. Prueba estadística t de los coeficientes de los parámetros estimados.</span></p><table border="0" cellspacing="0" cellpadding="0" class="Table3"><colgroup><col width="146" /><col width="117" /><col width="117" /><col width="117" /><col width="118" /></colgroup><tr class="Table31"><td style="text-align:left;width:1.3194in; " class="Table3_A1"><p class="P35"> </p></td><td style="text-align:left;width:1.0556in; " class="Table3_B1"><p class="P42">Estadísticos t Calculado</p></td><td style="text-align:left;width:1.0556in; " class="Table3_C1"><p class="P42">vs</p></td><td style="text-align:left;width:1.0556in; " class="Table3_C1"><p class="P42">Estadístico Crítico</p></td><td style="text-align:left;width:1.0625in; " class="Table3_E1"><p class="P42">Decisión</p></td></tr><tr class="Table32"><td style="text-align:left;width:1.3194in; " class="Table3_A2"><p class="P43">Constante</p></td><td style="text-align:left;width:1.0556in; " class="Table3_B2"><p class="P39">3.610226249</p></td><td style="text-align:left;width:1.0556in; " class="Table3_C2"><p class="P38">Mayor</p></td><td style="text-align:left;width:1.0556in; " class="Table3_C2"><p class="P39">2.295360352</p></td><td style="text-align:left;width:1.0625in; " class="Table3_E2"><p class="P38">Acepta</p></td></tr><tr class="Table32"><td style="text-align:left;width:1.3194in; " class="Table3_A3"><p class="P43">Pendiente</p></td><td style="text-align:left;width:1.0556in; " class="Table3_B3"><p class="P39">42.98183921</p></td><td style="text-align:left;width:1.0556in; " class="Table3_A1"><p class="P38">Mayor</p></td><td style="text-align:left;width:1.0556in; " class="Table3_A1"><p class="P39">2.295360352</p></td><td style="text-align:left;width:1.0625in; " class="Table3_E3"><p class="P38">Acepta</p></td></tr></table><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">La tabla anterior, muestra que tanto el valor del estadístico t de la constante, como el de la pendiente, son mayores que el estadístico t crítico o teórico (2.295), lo cual quiere decir, que ambos parámetros betas estimados, son significantes para el modelo de regresión lineal planteado. </p><p class="Standard"> </p><p class="Standard">De igual manera, al realizar la prueba estadística F, en la que al igual que en la prueba del estadístico t, se compara el valor del estadístico calculado con el teórico o crítico, el valor del estadístico F calculado obtenido fue de 1,847.44 a como se muestra en la tabla a continuación:</p><p class="Standard"> </p><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla3" />4</span><span class="T15">. Prueba estadística F.</span></p><table border="0" cellspacing="0" cellpadding="0" class="Table4"><colgroup><col width="117" /><col width="92" /><col width="146" /><col width="93" /></colgroup><tr class="Table41"><td style="text-align:left;width:1.0556in; " class="Table4_A1"><p class="P42">Estadístico F Calculado</p></td><td style="text-align:left;width:0.8333in; " class="Table4_B1"><p class="P42">vs</p></td><td style="text-align:left;width:1.3194in; " class="Table4_B1"><p class="P42">Estadístico Crítico</p></td><td style="text-align:left;width:0.8403in; " class="Table4_D1"><p class="P42">Decisión</p></td></tr><tr class="Table42"><td style="text-align:left;width:1.0556in; " class="Table4_A2"><p class="P36">1847.438502</p></td><td style="text-align:left;width:0.8333in; " class="Table4_B2"><p class="P38">Mayor</p></td><td style="text-align:left;width:1.3194in; " class="Table4_B2"><p class="P38">3.990923772</p></td><td style="text-align:left;width:0.8403in; " class="Table4_D2"><p class="P38">Acepta</p></td></tr></table><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard"> </p><p class="Standard">Al comparar ambos estadísticos F, se puede apreciar en la tabla anterior, que el estadístico F calculado es mucho mayor que el estadístico calculado, esto indica que los parámetros estimados de los coeficientes, como conjunto, son significativos en el modelo de regresión lineal planteado.</p><p class="Standard"> </p><p class="Standard">Por otra parte, al realizar el grado de relación lineal que existe entre la variable precio de las acciones y tiempo, a través del coeficiente de correlación múltiple (r), el valor obtenido de este coeficiente fue de 0.98, lo cual significa que la relación lineal que existe entre las variable dependiente (precio) e independiente (tiempo), es del 98%. </p><p class="Standard"> </p><p class="Standard">Además, al efectuar la prueba del coeficiente de determinación (r<span class="T37">2</span>), el cual se encuentra entre cero y uno, el valor obtenido de este fue altamente significativo, alcanzando un valor de 0.9665, es decir, la variable independiente (tiempo), explica en aproximadamente 97% a la variable independiente (precio) y que solamente un 3% se encuentra explicada por otras variables que no se incluyen en el modelo.</p><p class="Standard" /><p class="Standard">De igual manera, al realizar el ajuste del coeficiente de determinación, este no presentó una variación significativa, prácticamente se mantuvo igual, siendo el valor obtenido de 0.9659; reforzando, lo planteado anteriormente, que la variable independiente, explica en aproximadamente en un 97% a la variable dependiente.</p><p class="Standard">Una vez obtenido los coeficientes de la constante y de la pendiente, los niveles de significancia individual y de conjunto, a través de las pruebas estadísticas t y F, respectivamente y al determinar el grado de relación lineal y el coeficiente de determinación, siendo todo esto significativos para el modelo, se procede a plantear la ecuación que estimaría el precio promedio mensual de las acciones de Facebook, Inc., a como se muestra a continuación:</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="P57"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2709in;width:2.75in; padding:0; " class="fr2" id="graphics83"><img style="height:0.6881cm;width:6.985cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P78"><span class="T10">Ecuación </span><span class="T10"><a id="refEcuación25" />26</span><span class="T10">. Ecuación para estimar los precios promedios mensuales de las acciones de Facebook.</span></p><p class="P29">Dónde:</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:5.8638in; padding:0; " class="fr2" id="graphics84"><img style="height:0.5291cm;width:14.8941cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:0.198in;width:2.6252in; padding:0; " class="fr2" id="graphics85"><img style="height:0.5029cm;width:6.668cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
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		--><span style="height:3.0402in;width:5.0402in; padding:0; " class="fr2" id="Gráfico_2"><img style="height:7.7221cm;width:12.8021cm;" alt="" 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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">En la ilustración anterior, se puede apreciar la línea de ajuste del modelo de regresión lineal planteado, para la estimación de los precios promedios mensuales de las acciones de Facebook, en función del tiempo, expresado en meses.</p><p class="Standard"> </p><p class="Standard">A continuación, se presentan los precios observados, de los últimos diez meses, así como también, los precios ajustados por el modelo.</p><p class="Standard"> </p><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla4" />5</span><span class="T15">. Precios observados vs precios ajustados del 1 de enero al 1 de octubre de 2017</span>.</p><table border="0" cellspacing="0" cellpadding="0" class="Table5"><colgroup><col width="94" /><col width="121" /><col width="131" /><col width="106" /></colgroup><tr class="Table51"><td style="text-align:left;width:0.8451in; " class="Table5_A1"><p class="P36">Fecha</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B1"><p class="P36">Variable</p><p class="P36">Independiente</p><p class="P36">(X)</p></td><td style="text-align:left;width:1.1771in; " class="Table5_B1"><p class="P36">Precio mensual</p><p class="P36">de acciones</p><p class="P36">(Y)</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D1"><p class="P36">Precio</p><p class="P36">Ajustado de</p><p class="P36">Y</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A2"><p class="P47">01/01/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B2"><p class="P51">57</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C2"><p class="P51">$130.32</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D2"><p class="P51">$137.04</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/02/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">58</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$135.54</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$139.32</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/03/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">59</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$142.05</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$141.59</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/04/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">60</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$150.25</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$143.87</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/05/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">61</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$151.46</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$146.14</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/06/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">62</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$150.98</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$148.42</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/07/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">63</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$169.25</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$150.69</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/08/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">64</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$171.97</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$152.97</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A3"><p class="P47">01/09/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B3"><p class="P51">65</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C3"><p class="P51">$170.87</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D3"><p class="P51">$155.24</p></td></tr><tr class="Table52"><td style="text-align:left;width:0.8451in; " class="Table5_A11"><p class="P47">01/10/2017</p></td><td style="text-align:left;width:1.0917in; " class="Table5_B11"><p class="P51">66</p></td><td style="text-align:left;width:1.1771in; " class="Table5_C11"><p class="P51">$173.74</p></td><td style="text-align:left;width:0.9521in; " class="Table5_D11"><p class="P51">$157.52</p></td></tr></table><p class="P29"> <span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">En la siguiente ilustración, se puede apreciar la dispersión de los datos tanto de los precios observados como la de los precios estimados a través del modelo planteado.</p><p class="Standard"> </p><p class="P79"><span class="T15">Ilustración </span><span class="T15"><a id="refIlustración2" />3</span><span class="T15">. Comparación entre precios observados y estimados en el período del 1 de enero al 1 de octubre de 2017.</span></p><!--Next 'div' was a 'text:p'.--><div class="P34"> <!--Next '
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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P29"><span class="T38">Fuente: Elaboración propia en base a las cotizaciones obtenidas de </span><span class="T39">Yahoo Finanzas</span><span class="T38">.</span></p><p class="Standard">En la ilustración anterior, se observa que la ecuación de regresión, de los últimos diez meses, para los datos observados, presenta una constante de 160.02 y una pendiente de 5.1164, además, se evidencia un coeficiente de determinación de 0.9392. Por otra parte, los valores obtenidos de los estadísticos antes mencionados, del precio ajustado, presentan los mismos coeficientes betas del modelo propuesto, pero con un coeficiente de determinación igual a uno.</p><p class="Standard"> </p><!--Next 'div' was a 'text:p'.--><div class="Standard">Utilizando la ecuación del modelo de regresión lineal planteado,<!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:1.6563in; padding:0; " class="fr3" id="graphics87"><img style="height:0.5291cm;width:4.207cm;" alt="" src="data:image/*;base64,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" /></span><!--Next 'div' added for floating.--><div style="position:relative; left:0cm;">, se esperaría que el precio promedio estimado de las acciones de Facebook, Inc., para los próximos diez meses (del 1 de noviembre de 2017 al 1 de agosto de 2018), sería aproximadamente a como se muestra a continuación en la siguiente tabla:</div></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="P79"><span class="T15">Tabla </span><span class="T15"><a id="refTabla5" />6</span><span class="T15">. Estimación de precios promedios mensuales de las acciones en el período de 1 de noviembre de 2017 a 1 de agosto de 2018.</span></p><table border="0" cellspacing="0" cellpadding="0" class="Table6"><colgroup><col width="114" /><col width="115" /><col width="94" /></colgroup><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A1"><p class="P46">Fecha</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B1"><p class="P46">Variable independiente</p><p class="P46">(X)</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C1"><p class="P46">Estimación de precios </p><p class="P46">(Y)</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A2"><p class="P46">01/11/2017</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B2"><p class="P50">67</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C2"><p class="P50">$159.79</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/12/2017</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">68</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$162.07</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/01/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">69</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$164.34</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/02/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">70</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$166.62</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/03/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">71</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$168.89</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/04/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">72</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$171.17</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/05/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">73</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$173.44</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/06/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">74</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$175.72</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A3"><p class="P46">01/07/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B3"><p class="P50">75</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C3"><p class="P50">$177.99</p></td></tr><tr class="Table61"><td style="text-align:left;width:1.0278in; " class="Table6_A11"><p class="P46">01/08/2018</p></td><td style="text-align:left;width:1.0389in; " class="Table6_B11"><p class="P50">76</p></td><td style="text-align:left;width:0.8451in; " class="Table6_C11"><p class="P50">$180.27</p></td></tr></table><p class="P40">Fuente: Elaboración propia en base a las cotizaciones obtenidas a partir del modelo de regresión lineal planteado.</p><p class="P29"> </p><h1 class="P61"><a id="a__Conclusiones"><span /></a>Conclusiones</h1><p class="P52"> </p><p class="Standard">Los modelos de regresión lineal simple, establecen una relación de dependencia entre dos variables, donde la variable dependiente se encuentra en función de la variable independiente, con el objetivo de calcular los coeficientes de los parámetros de la constante o intercepto y de la pendiente, para determinar la ecuación de regresión lineal. La ecuación encontrada, sirve para estimar los valores de la variable dependiente ante posibles cambios en la variable independiente, en otras palabras, la ecuación sirve para realizar pronósticos o proyecciones.</p><p class="Standard"> </p><p class="Standard">El precio promedio mensual de las acciones de Facebook, Inc., durante el período observado, del 1 de mayo de 2012 al 1 de octubre de 2017, es de $ 83.58 dólares, con una desviación estándar al valor promedio de $ 44.08 dólares, en un rango de $ 155.88 dólares.</p><p class="Standard"> </p><p class="Standard">En cuanto a la relación lineal existente entre la variable precio promedio de las acciones de Facebook, Inc., y la variable tiempo, expresada en meses, existe un alto grado de relación lineal, estimado a partir del coeficiente de correlación múltiple o lineal (r), el cual alcanzó un valor del 98% durante el período observado. De igual manera, al calcular el coeficiente de determinación (r<span class="T37">2</span>) y el r<span class="T37">2</span> ajustado, los cuales determinan el nivel de explicación de la variable independiente sobre la variable dependiente, estos alcanzaron un valor del 97% aproximadamente. Esto quiere decir que el tiempo explica en un 97% el comportamiento de la variable dependiente precio promedio de las acciones de Facebook.</p><p class="Standard"> </p><p class="Standard">Tanto el coeficiente beta de la constante (7.36) como el coeficiente beta de la pendiente (2.275), son estadísticamente significativos al realizar la prueba estadística t para ambos coeficientes, donde el valor de los t calculados (3.61 constante y 42.98 pendiente) fueron mayores que los t teóricos o críticos (2.295). Además, al realizar la prueba de significancia de los coeficientes como conjunto, a través de la prueba estadística F, se determinó que ambos coeficientes son altamente significativos debido a que el valor del estadístico F calculado (1,847.44) fue mucho mayor que el valor del estadístico F crítico o teórico (3.99).</p><p class="Standard"> </p><p class="P55">La ecuación de regresión lineal simple, queda determinada de la siguiente forma:</p><!--Next 'div' was a 'text:p'.--><div class="P29"> <!--Next '
			span' is a draw:frame.
		--><span style="height:0.2083in;width:2.0626in; padding:0; " class="fr2" id="graphics88"><img style="height:0.5291cm;width:5.239cm;" alt="" src="data:image/*;base64,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" /></span></div><div style="clear:both; line-height:0; width:0; height:0; margin:0; padding:0;"> </div><p class="Standard">La ecuación anterior, sirve para estimar el precio promedio mensual de las acciones de la empresa Facebook, Inc. Donde se espera que el precio promedio de las acciones de la empresa, durante los próximos 10 meses (del 1 de noviembre de 2017 al 1 de agosto de 2018), será de $ 170.03 dólares con una desviación estándar estimada de $ 6.53 dólares en torno al valor promedio esperado.</p><p class="P55"> </p><h1 class="P62"><a id="a__Bibliografía"><span /></a>Bibliografía</h1><p class="P13"> </p><p class="P83"><span class="T27">Anderson, D. R., Sweeney, D. J., &amp; Williams, T. A. (2008). </span><span class="T31">Estadística para la administración y economía</span><span class="T30"> (Décima ed.). (S. R. Cervantes González, Ed.) México, D.F., México: CENGAGE Learning.</span></p><p class="P83"><span class="T30">Díaz Fernández, M., &amp; Llorente Marrón, M. D. (2013). </span><span class="T31">Econometría</span><span class="T30"> (Cuarta ed.). Madrid, España: Ediciones Pirámide. Recuperado el 16 de Octubre de 2017, de http://site.ebrary.com/lib/bibliotecaunansp/reader.action?docID=11072811&amp;page=36&amp;ppg=36</span></p><p class="P83"><span class="T30">Diccionario de la Lengua Española Edición del Tricentenario. (Octubre de 2014). </span><span class="T31">Real Academia Española</span><span class="T30">. Recuperado el 15 de Octubre de 2017, de Real Academia Española: http://dle.rae.es/?id=VXs6SD8</span></p><p class="P83"><span class="T30">Gujarati, D. N., &amp; Porter, D. C. (2010). </span><span class="T31">Econometría</span><span class="T30"> (Quinta ed.). México, D.F., México: Mc Graw Hill.</span></p><p class="P83"><span class="T30">Mahía , R. (2006). </span><span class="T31">Breve apunte sobre la estimación de los parámetros MCO y Máxima Verosimilitud.</span><span class="T30"> Recuperado el 16 de Octubre de 2017, de https://www.uam.es/personal_pdi/economicas/rarce/pdf/estimacion_mco_mv.pdf</span></p><p class="P83"><span class="T30">Quintana Romero , L., &amp; Mendoza González, M. Á. (2008). </span><span class="T31">Econometría Básica: Modelos y aplicaciones a la economía mexicana</span><span class="T30"> (Primera ed.). México, D.F., México: Plaza y Valdes. Recuperado el 16 de Octubre de 2017, de http://site.ebrary.com/lib/bibliotecaunansp/reader.action?docID=10844822&amp;page=94&amp;ppg=94</span></p><p class="P83"><span class="T30">Webster, A. L. (2002). </span><span class="T31">Estadística aplicada a los negocios y la economía</span><span class="T30"> (Tercera ed.). (L. Solano Arévalo, Ed., &amp; Y. M. García, Trad.) Bogotá, Santa Fe, Colombia: Mc Graw Hill.</span></p><p class="P83"><span class="T30">Wikipedia La Enciclopedia Libre. (s.f.). </span><span class="T31">Wikipedia La Enciclopedia Libre</span><span class="T30">. Recuperado el 15 de Octubre de 2017, de Wikipedia La Enciclopedia Libre: https://es.wikipedia.org/wiki/Facebook</span></p><p class="P83"><span class="T30">Yahoo Finanzas. (s.f.). </span><span class="T31">Yahoo Finanzas</span><span class="T30">. Recuperado el 15 de Octubre de 2017, de Yahoo Finanzas: https://es.finance.yahoo.com/quote/FB/profile?p=FB</span></p><p class="Standard"> </p><p class="P55"> </p><p class="P53"><a name="_PictureBullets" /></p></body></html>