La autobiografía escrita: escenario para la reflexión del yo, el entorno social y el proyecto de vida en estudiantes de Educación Secundaria en Bogotá
Artículo Materias > Educación Fundación Universitaria Internacional de Colombia > Investigación > Artículos y libros Abierto Español En la asignatura de español se analizaron 187 autobiografías escritas por estudiantes de secundaria con el fin de examinar la forma cómo asimilan la competencia lingüística, a nivel gramatical y emocional y su relación con el entorno. Estudios previos señalan la gramática y la ortografía para explorar el uso de la lengua, pero no profundizan en la personalidad adolescente. El escrito desarrolló la cronología humana, desde el embarazo, la familia y la escolaridad, hasta el proyecto de vida, eje articulador del producto textual. La metodología combina el método cuantitativo y cualitativo para la obtención de resultados que son: la asimilación de la competencia lingüística, el autoconocimiento y su devenir histórico en la vida de los estudiantes. Plantear el proyecto de vida es esencial para ellos ya que les permite observar su experiencia vital en perspectiva y mejorar las condiciones de pobreza que agobia a algunas familias, concretar sus objetivos y superar la ausencia de educación que les impide progresar y conseguir trabajos remunerados, acorde con sus capacidades. El autoanálisis y la reflexión les hizo comprender sus vivencias, cambiar aquellas susceptibles de hacerlo y procurar el bien personal y de quienes forman parte de su entorno. Hoy, los recientes acontecimientos sociales y políticos de Colombia, al realizar marchas pacíficas para reclamar mejores oportunidades laborales, educativas y de salud, harán que la juventud realice un análisis de la situación, reflexione sobre su futuro y proponga cambios que beneficien a la sociedad y al país, a la luz de la producción autobiográfica. metadata Calvo Cubillos, Clara Lucía y Villanueva Roa, Juan de Dios mail clara.calvo@doctorado.unini.edu.mx, SIN ESPECIFICAR (2022) La autobiografía escrita: escenario para la reflexión del yo, el entorno social y el proyecto de vida en estudiantes de Educación Secundaria en Bogotá. MLS Educational Research (MLSER), 6 (2).
Texto completo no disponible.Resumen
En la asignatura de español se analizaron 187 autobiografías escritas por estudiantes de secundaria con el fin de examinar la forma cómo asimilan la competencia lingüística, a nivel gramatical y emocional y su relación con el entorno. Estudios previos señalan la gramática y la ortografía para explorar el uso de la lengua, pero no profundizan en la personalidad adolescente. El escrito desarrolló la cronología humana, desde el embarazo, la familia y la escolaridad, hasta el proyecto de vida, eje articulador del producto textual. La metodología combina el método cuantitativo y cualitativo para la obtención de resultados que son: la asimilación de la competencia lingüística, el autoconocimiento y su devenir histórico en la vida de los estudiantes. Plantear el proyecto de vida es esencial para ellos ya que les permite observar su experiencia vital en perspectiva y mejorar las condiciones de pobreza que agobia a algunas familias, concretar sus objetivos y superar la ausencia de educación que les impide progresar y conseguir trabajos remunerados, acorde con sus capacidades. El autoanálisis y la reflexión les hizo comprender sus vivencias, cambiar aquellas susceptibles de hacerlo y procurar el bien personal y de quienes forman parte de su entorno. Hoy, los recientes acontecimientos sociales y políticos de Colombia, al realizar marchas pacíficas para reclamar mejores oportunidades laborales, educativas y de salud, harán que la juventud realice un análisis de la situación, reflexione sobre su futuro y proponga cambios que beneficien a la sociedad y al país, a la luz de la producción autobiográfica.
Tipo de Documento: | Artículo |
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Palabras Clave: | Autobiografía, narrativa, escritura, adolescente, interioridad |
Clasificación temática: | Materias > Educación |
Divisiones: | Fundación Universitaria Internacional de Colombia > Investigación > Artículos y libros |
Depositado: | 14 Oct 2022 23:30 |
Ultima Modificación: | 16 Feb 2023 23:30 |
URI: | https://repositorio.unincol.edu.co/id/eprint/4014 |
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