Análisis de contextos donde vive e interactúa el menor sordo: buenas prácticas para la inclusión escolar y ciudadana del niño con discapacidad auditiva de Villavicencio
Tesis Materias > Educación Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales Cerrado Español La presente investigación analizó los contextos donde vive e interactúa el menor sordo estableciendo para ello la inclusión escolar y ciudadana de niños con discapacidad auditiva, de Villavicencio, desde un enfoque cualitativo - etnográfico. Los objetivos específicos conllevaron: identificar modelos de comunicación surgidos la interior de los hogares, en donde un hijo presenta discapacidad auditiva; analizar las prácticas educativas subyacentes en el saber – hacer de docentes que trabajan con población sorda; indagar posibles modelos de sociabilidad de la niñez sorda en contextos barriales o ciudadanos de Villavicencio, identificando los saberes del ser social del sordo; elaborar una propuesta de formación para los actores que conviven con el niño sordo. De ahí, la importancia de reflexionar para comprender las realidades del niño con discapacidad auditiva, y realizar prácticas inclusivas que permitan potenciar el desarrollo integral del niño con discapacidad auditiva, como ejercicio de compresión sobre los lenguajes posibles entre la madre oyente – hijo sordo y la familia. El estudio es etnográfico pues se desarrollará la observación participante de tipo etnográfico, en lugares como el Colegio Departamental La Esperanza, sede Sordos y entrevistas en locaciones visitadas de forma constante por la población sorda. Se desarrollarán talleres, su documentación narrativa de experiencias pedagógicas para llegar a una descripción detallada de la realidad estudiada en lo que a la escuela y el ser maestro(a), se refiere. Las estrategias de recolección de información serán entrevista semiestructurada y cartografía social. Los resultados esperados conllevan a la identificación de métodos de comunicación emergentes al interior de los hogares en donde uno de los hijos posee discapacidad auditiva. Así mismo, establecer una mirada sobre los procesos de interacción del niño sordo con la cultura escolar y los procesos de socialización ciudadana a nivel del contexto barrial. metadata Casallas Forero, Elizabeth mail lic.lizcasallas@hotmail.com (2021) Análisis de contextos donde vive e interactúa el menor sordo: buenas prácticas para la inclusión escolar y ciudadana del niño con discapacidad auditiva de Villavicencio. Doctoral thesis, SIN ESPECIFICAR.
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La presente investigación analizó los contextos donde vive e interactúa el menor sordo estableciendo para ello la inclusión escolar y ciudadana de niños con discapacidad auditiva, de Villavicencio, desde un enfoque cualitativo - etnográfico. Los objetivos específicos conllevaron: identificar modelos de comunicación surgidos la interior de los hogares, en donde un hijo presenta discapacidad auditiva; analizar las prácticas educativas subyacentes en el saber – hacer de docentes que trabajan con población sorda; indagar posibles modelos de sociabilidad de la niñez sorda en contextos barriales o ciudadanos de Villavicencio, identificando los saberes del ser social del sordo; elaborar una propuesta de formación para los actores que conviven con el niño sordo. De ahí, la importancia de reflexionar para comprender las realidades del niño con discapacidad auditiva, y realizar prácticas inclusivas que permitan potenciar el desarrollo integral del niño con discapacidad auditiva, como ejercicio de compresión sobre los lenguajes posibles entre la madre oyente – hijo sordo y la familia. El estudio es etnográfico pues se desarrollará la observación participante de tipo etnográfico, en lugares como el Colegio Departamental La Esperanza, sede Sordos y entrevistas en locaciones visitadas de forma constante por la población sorda. Se desarrollarán talleres, su documentación narrativa de experiencias pedagógicas para llegar a una descripción detallada de la realidad estudiada en lo que a la escuela y el ser maestro(a), se refiere. Las estrategias de recolección de información serán entrevista semiestructurada y cartografía social. Los resultados esperados conllevan a la identificación de métodos de comunicación emergentes al interior de los hogares en donde uno de los hijos posee discapacidad auditiva. Así mismo, establecer una mirada sobre los procesos de interacción del niño sordo con la cultura escolar y los procesos de socialización ciudadana a nivel del contexto barrial.
| Tipo de Documento: | Tesis (Doctoral) |
|---|---|
| Palabras Clave: | discapacidad auditiva, inclusión, contexto barrial, lengua de señas, comunicación, ciudadanía y derechos humanos |
| Clasificación temática: | Materias > Educación |
| Divisiones: | Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales |
| Depositado: | 22 Sep 2023 23:30 |
| Ultima Modificación: | 22 Sep 2023 23:30 |
| URI: | https://repositorio.unini.edu.mx/id/eprint/1321 |
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