Estrategias didácticas para estimular el lenguaje oral en los niños y niñas de 19 a 36 meses.
Tesis
Materias > Educación
Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
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La problemática encontrada sobre el lenguaje oral en los niños y niñas, permitió la investigación titulada Estrategias didácticas para estimular el lenguaje oral en los niños y niñas de 19 a 36 meses de la modalidad Creciendo con Nuestros Hijos “Manitos Juguetonas”, cantón Azogues, provincia Cañar. El presente trabajo fue elaborado utilizando investigación bibliográfica y la aplicación de métodos y técnicas de investigación a través de aplicación, tabulación y análisis que orientan a la elaboración de actividades didácticas adecuadas de estimulación del lenguaje oral en beneficio de los niños y niñas de esta modalidad. La investigación demostró que un alto porcentaje tiene un mínimo grado de conocimiento de estrategias didácticas que permitan estimular el lenguaje oral de los niños y niñas, afectando así a la correcta adquisición del lenguaje oral de las y los niños de ésta modalidad. Al plantear esta propuesta, como instrumento innovador, se aportará a la estimulación del lenguaje oral de los menores del sector Guapán, la misma que es una guía de estrategias didácticas, herramienta útil que se adapta de acuerdo a la realidad educativa familiar de estos niños y que admite la estimulación correcta del lenguaje oral; debe ser aplicada por educadoras familiares, padres/madres. Las actividades previstas están articuladas con el sistema de educación inicial actual y de las reformas de la política pública de desarrollo infantil integral del Ecuador y con el Modelo de Educación Inclusivo de Atención Familiar “Creciendo con Nuestros Hijos- CNH del MIES”, constituye además un mecanismo muy valioso de aplicación, para el desarrollo correcto del lenguaje oral, fortaleciendo las habilidades y destrezas de los niños y niñas.
metadata
Urgiles Neira, Lidia Maritza
mail
merish909@hotmail.com
(2022)
Estrategias didácticas para estimular el lenguaje oral en los niños y niñas de 19 a 36 meses.
Masters thesis, SIN ESPECIFICAR.
Resumen
La problemática encontrada sobre el lenguaje oral en los niños y niñas, permitió la investigación titulada Estrategias didácticas para estimular el lenguaje oral en los niños y niñas de 19 a 36 meses de la modalidad Creciendo con Nuestros Hijos “Manitos Juguetonas”, cantón Azogues, provincia Cañar. El presente trabajo fue elaborado utilizando investigación bibliográfica y la aplicación de métodos y técnicas de investigación a través de aplicación, tabulación y análisis que orientan a la elaboración de actividades didácticas adecuadas de estimulación del lenguaje oral en beneficio de los niños y niñas de esta modalidad. La investigación demostró que un alto porcentaje tiene un mínimo grado de conocimiento de estrategias didácticas que permitan estimular el lenguaje oral de los niños y niñas, afectando así a la correcta adquisición del lenguaje oral de las y los niños de ésta modalidad. Al plantear esta propuesta, como instrumento innovador, se aportará a la estimulación del lenguaje oral de los menores del sector Guapán, la misma que es una guía de estrategias didácticas, herramienta útil que se adapta de acuerdo a la realidad educativa familiar de estos niños y que admite la estimulación correcta del lenguaje oral; debe ser aplicada por educadoras familiares, padres/madres. Las actividades previstas están articuladas con el sistema de educación inicial actual y de las reformas de la política pública de desarrollo infantil integral del Ecuador y con el Modelo de Educación Inclusivo de Atención Familiar “Creciendo con Nuestros Hijos- CNH del MIES”, constituye además un mecanismo muy valioso de aplicación, para el desarrollo correcto del lenguaje oral, fortaleciendo las habilidades y destrezas de los niños y niñas.
Tipo de Documento: | Tesis (Masters) |
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Palabras Clave: | Estrategias, didácticas, estimulación, lenguaje oral. |
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: | 17 Nov 2023 23:30 |
Ultima Modificación: | 17 Nov 2023 23:30 |
URI: | https://repositorio.unib.org/id/eprint/2314 |
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