Aprendizaje social como herramienta para el desarrollo de habilidades cognitivas en estudiantes del 1ro de bachillerato

Tesis Materias > Educación Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Cerrado Español En la actualizada la educación virtual, requirió que los menores de edad tengan acceso al internet, lo cual, tiene beneficios tales como el sostenimiento de los procesos de enseñanza – aprendizaje, pero por otro lado, estos se expusieron a contenidos inadecuados, lo que ha hecho que repliquen actos no deseables en los planteles, sin embargo, esto es el vivo ejemplo del aprendizaje social, que consiste en emular comportamiento a partir de la observación, lo cual, da la pauta para establecer que el objetivo general de este estudio es “Diseñar una estrategia educativa orientada a potenciar el aprendizaje social contribuyendo a la mejora del proceso de enseñanza y aprendizaje en los estudiantes del primero de bachillerato de la Unidad Educativa Quito Sur, año 2021”. En cuanto a la metodología de la investigación se recurre al enfoque cualitativo, con un diseño descriptivo – bibliográfico, mientras que como instrumento de la investigación se define que el más adecuado es el guion de entrevista, el cual cuenta con 6 reactivos y que los participantes del estudio son 8 docentes seleccionados por cumplir con los criterios de inclusión. Los resultados muestran, que los docentes manifiestan un desconocimiento generalizado sobre el aprendizaje social, lo cual, incide en el hecho de que este se aplique en la institución de manera empírica, hasta el punto de que se emplean dinámicas que responden a sus preceptos pero que, han sido mal implementados, por otro lado, se define que la herramienta más adecuada para incluir en una propuesta es el debate y según recomendaciones de los docentes, esta debe ser validada por experto, haciendo necesario el diseño de una rúbrica de evaluación. En conclusión, el aprendizaje social, es una alternativa para el desarrollo y fortalecimiento de habilidades cognitivas, dentro de las cuales consta el pensamiento crítico, puesto que luego del intercambio de ideas, los estudiantes son capaces de generar sus propias conceptualizaciones y someter a juicio ideas para con base en los conocimientos previsto aceptarla o rechazarla. metadata Mendoza Muñoz, Deisy Auxiliadora mail patitafea-mm@hotmail.com (2022) Aprendizaje social como herramienta para el desarrollo de habilidades cognitivas en estudiantes del 1ro de bachillerato. Masters thesis, SIN ESPECIFICAR.

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Resumen

En la actualizada la educación virtual, requirió que los menores de edad tengan acceso al internet, lo cual, tiene beneficios tales como el sostenimiento de los procesos de enseñanza – aprendizaje, pero por otro lado, estos se expusieron a contenidos inadecuados, lo que ha hecho que repliquen actos no deseables en los planteles, sin embargo, esto es el vivo ejemplo del aprendizaje social, que consiste en emular comportamiento a partir de la observación, lo cual, da la pauta para establecer que el objetivo general de este estudio es “Diseñar una estrategia educativa orientada a potenciar el aprendizaje social contribuyendo a la mejora del proceso de enseñanza y aprendizaje en los estudiantes del primero de bachillerato de la Unidad Educativa Quito Sur, año 2021”. En cuanto a la metodología de la investigación se recurre al enfoque cualitativo, con un diseño descriptivo – bibliográfico, mientras que como instrumento de la investigación se define que el más adecuado es el guion de entrevista, el cual cuenta con 6 reactivos y que los participantes del estudio son 8 docentes seleccionados por cumplir con los criterios de inclusión. Los resultados muestran, que los docentes manifiestan un desconocimiento generalizado sobre el aprendizaje social, lo cual, incide en el hecho de que este se aplique en la institución de manera empírica, hasta el punto de que se emplean dinámicas que responden a sus preceptos pero que, han sido mal implementados, por otro lado, se define que la herramienta más adecuada para incluir en una propuesta es el debate y según recomendaciones de los docentes, esta debe ser validada por experto, haciendo necesario el diseño de una rúbrica de evaluación. En conclusión, el aprendizaje social, es una alternativa para el desarrollo y fortalecimiento de habilidades cognitivas, dentro de las cuales consta el pensamiento crítico, puesto que luego del intercambio de ideas, los estudiantes son capaces de generar sus propias conceptualizaciones y someter a juicio ideas para con base en los conocimientos previsto aceptarla o rechazarla.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Aprendizaje social, cognición, pensamiento crítico, motivación, conceptualización.
Clasificación temática: Materias > Educación
Divisiones: Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 06 May 2024 23:30
Ultima Modificación: 06 May 2024 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/3178

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