Deserción escolar de la sección secundaria del Sistema Educativo Nacional del Ecuador en el Valle de los Chillos.

Thesis Subjects > Education Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish En este trabajo de fin de máster se presenta una propuesta de innovación escolar aplicada en el COLEGIO JHON OSTEEN para solucionar en parte el problema de deserción escolar de la sección secundaria del Sistema Educativo Nacional del Ecuador dando prioridad al sector del Valle de los Chillos sector donde se ubica la institución.Tomando la Ley Orgánica de educación intercultural vigente como la normativa para ejecutar acciones legales. Según una investigación aplicada por la UNESCO los índices de deserción escolar en el país son altos por lo que es necesario buscar soluciones inmediatas al problema.Para viabilizar el ingreso de los estudiantes desertores al sistema regular de educación secundaria la Ley Orgánica de educación Intercultural y el Reglamento Educativo, brindan una normativa que facilita la reinserción de estos jóvenes al sistema educativo formal.Por lo que se diseña en el Colegio John Osteen un programa académico que les permita concluir los estudios secundarios a jóvenes que han abandonado las aulas durante tres años o más.Según las investigaciones realizadas por (Suarez, 2018); la tasa global de deserción en las zonas urbanas en el primer cuartil es del 38%, mientras que en el cuartil de ingresos más alto es del 13%. Las tasas promedio de abandono escolar temprano son del 12% y del 3%, respectivamente, y los promedios correspondientes al retiro de la escuela al finalizar la primaria son del 16% en el cuartil más pobre y del 6% en el más rico. Por su parte, los porcentajes del total de adolescentes que abandonan la secundaria antes de completarla son del 15% y del 5% en los cuartiles extremos.A través de la investigación realizada y datos recogidos se aplicó una encuesta en Google que nos permitió acceder a jóvenes que han desertado del sistema educativo y que estén dispuestos a volver para alcanzar sueños y metas que fueron desechadas.El tipo de diseño de la investigación es no experimental, transaccional correlacional, causal busca describir la relación causal entre la variable independiente (causas que provocan la deserción) y la dependiente (número de estudiantes desertores), esta investigación aportará con información suficiente para plantear oportunidades para la inclusión en el sistema educativo regular de los jóvenes desertores.Use una técnica de investigación estructurada a través de un cuestionario a una población amplia que me permitirá seleccionar la muestra que son jóvenes que cumplen con los requerimientos legales para realizar el proceso de inclusión.En el diseño de la propuesta trabajamos en equipo junto a los maestros de la institución a quienes se les socializara los resultados de la encuesta realizada, diseñando una propuesta académica de acuerdo a las necesidades del grupo.Con tristeza digo que esto es una gota de agua en un mar de posibles soluciones y que creo firmemente que se irán presentando para solucionar la problemática planteada. metadata Almeida Espinoza, Pilar del Rocio mail rocio.almeida.61@gmail.com (2022) Deserción escolar de la sección secundaria del Sistema Educativo Nacional del Ecuador en el Valle de los Chillos. Master's thesis, UNSPECIFIED.

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Abstract

En este trabajo de fin de máster se presenta una propuesta de innovación escolar aplicada en el COLEGIO JHON OSTEEN para solucionar en parte el problema de deserción escolar de la sección secundaria del Sistema Educativo Nacional del Ecuador dando prioridad al sector del Valle de los Chillos sector donde se ubica la institución.Tomando la Ley Orgánica de educación intercultural vigente como la normativa para ejecutar acciones legales. Según una investigación aplicada por la UNESCO los índices de deserción escolar en el país son altos por lo que es necesario buscar soluciones inmediatas al problema.Para viabilizar el ingreso de los estudiantes desertores al sistema regular de educación secundaria la Ley Orgánica de educación Intercultural y el Reglamento Educativo, brindan una normativa que facilita la reinserción de estos jóvenes al sistema educativo formal.Por lo que se diseña en el Colegio John Osteen un programa académico que les permita concluir los estudios secundarios a jóvenes que han abandonado las aulas durante tres años o más.Según las investigaciones realizadas por (Suarez, 2018); la tasa global de deserción en las zonas urbanas en el primer cuartil es del 38%, mientras que en el cuartil de ingresos más alto es del 13%. Las tasas promedio de abandono escolar temprano son del 12% y del 3%, respectivamente, y los promedios correspondientes al retiro de la escuela al finalizar la primaria son del 16% en el cuartil más pobre y del 6% en el más rico. Por su parte, los porcentajes del total de adolescentes que abandonan la secundaria antes de completarla son del 15% y del 5% en los cuartiles extremos.A través de la investigación realizada y datos recogidos se aplicó una encuesta en Google que nos permitió acceder a jóvenes que han desertado del sistema educativo y que estén dispuestos a volver para alcanzar sueños y metas que fueron desechadas.El tipo de diseño de la investigación es no experimental, transaccional correlacional, causal busca describir la relación causal entre la variable independiente (causas que provocan la deserción) y la dependiente (número de estudiantes desertores), esta investigación aportará con información suficiente para plantear oportunidades para la inclusión en el sistema educativo regular de los jóvenes desertores.Use una técnica de investigación estructurada a través de un cuestionario a una población amplia que me permitirá seleccionar la muestra que son jóvenes que cumplen con los requerimientos legales para realizar el proceso de inclusión.En el diseño de la propuesta trabajamos en equipo junto a los maestros de la institución a quienes se les socializara los resultados de la encuesta realizada, diseñando una propuesta académica de acuerdo a las necesidades del grupo.Con tristeza digo que esto es una gota de agua en un mar de posibles soluciones y que creo firmemente que se irán presentando para solucionar la problemática planteada.

Document Type: Thesis (Master's)
Keywords: Deserción escolar, propuesta de solución
Subject classification: Subjects > Education
Divisions: Europe University of Atlantic > Teaching > Final Master Projects
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 30 Oct 2023 23:30
Last Modified: 30 Oct 2023 23:30
URI: https://repositorio.unib.org/id/eprint/1294

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