Análisis de los conocimientos que tienen los profesores de la educación básica para la educación inclusiva en la Unidad Educativa 29 Agosto.
Thesis
Subjects > Education
Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
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La investigación análisis de los conocimientos que tienen los profesores de la educación básica para la educación inclusiva en la Unidad Educativa 29 Agosto demuestra que la educación inclusiva es un proceso en el que los docentes juegan un papel importante para que los estudiantes puedan desarrollarse plenamente dentro de la institución y para la sociedad. El objetivo está enfocado en el diagnosticar la preparación de los profesores sobre educación inclusiva para favorecer el aprendizaje del alumnado con necesidades educativas especiales ya que tener conocimientos sobre atención a la diversidad permitirá que la sociedad se desarrolle y mejore cada día y así dar una calidad respuesta a todos los estudiantes con o sin Necesidades Educativas Especiales NEE. Los métodos utilizados en esta investigación es el enfoque cuantitativo, análisis descriptivo, además la lógica mediante el análisis y la deducción; la técnica utilizada fue la encuesta. Para ello se trabajó una muestra de 39 docentes, a los cuales se les aplicó una encuesta de escala tipo Likert, la cual permitió obtener información sobre los conocimientos que utilizan los docentes en educación inclusiva. Los resultados indican que los docentes tienen un bajo nivel de conocimiento sobre educación inclusiva, ya que se indica que realizan una integración de estudiantes que tienen NEE y no una educación inclusiva a pesar de que habían recibido capacitación sobre el tema, quedó solo en letras y palabras, por lo que es factible el diseño y aplicación de un plan de mejora de la preparación sobre educación inclusiva. La investigación permitirá desarrollar estrategias que se utilizará para diagnosticar la preparación que tienen los docentes mediante el diseño de un plan de mejora de la preparación sobre educación inclusiva .
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Coloma Calderón, Digna Argentina
mail
dignacoloma@outlook.es
(2022)
Análisis de los conocimientos que tienen los profesores de la educación básica para la educación inclusiva en la Unidad Educativa 29 Agosto.
Master's thesis, UNSPECIFIED.
Abstract
La investigación análisis de los conocimientos que tienen los profesores de la educación básica para la educación inclusiva en la Unidad Educativa 29 Agosto demuestra que la educación inclusiva es un proceso en el que los docentes juegan un papel importante para que los estudiantes puedan desarrollarse plenamente dentro de la institución y para la sociedad. El objetivo está enfocado en el diagnosticar la preparación de los profesores sobre educación inclusiva para favorecer el aprendizaje del alumnado con necesidades educativas especiales ya que tener conocimientos sobre atención a la diversidad permitirá que la sociedad se desarrolle y mejore cada día y así dar una calidad respuesta a todos los estudiantes con o sin Necesidades Educativas Especiales NEE. Los métodos utilizados en esta investigación es el enfoque cuantitativo, análisis descriptivo, además la lógica mediante el análisis y la deducción; la técnica utilizada fue la encuesta. Para ello se trabajó una muestra de 39 docentes, a los cuales se les aplicó una encuesta de escala tipo Likert, la cual permitió obtener información sobre los conocimientos que utilizan los docentes en educación inclusiva. Los resultados indican que los docentes tienen un bajo nivel de conocimiento sobre educación inclusiva, ya que se indica que realizan una integración de estudiantes que tienen NEE y no una educación inclusiva a pesar de que habían recibido capacitación sobre el tema, quedó solo en letras y palabras, por lo que es factible el diseño y aplicación de un plan de mejora de la preparación sobre educación inclusiva. La investigación permitirá desarrollar estrategias que se utilizará para diagnosticar la preparación que tienen los docentes mediante el diseño de un plan de mejora de la preparación sobre educación inclusiva .
| Document Type: | Thesis (Master's) |
|---|---|
| Keywords: | Conocimiento, educación inclusiva, instituciones fiscales, docente. |
| Subject classification: | Subjects > Education |
| Divisions: | Ibero-american International University > Teaching > Final Master Projects Ibero-american International University > Teaching > Master's Final Projects |
| Deposited: | 18 Apr 2024 23:30 |
| Last Modified: | 18 Apr 2024 23:30 |
| URI: | https://repositorio.unib.org/id/eprint/2748 |
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