Formación del profesorado de danza en Paraguay: propuesta de un modelo educativo basado en teorías cognitivo-constructivistas

Tesis Materias > Educación Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales Cerrado Español La presente tesis realiza un estudio de la situación actual de la danza en Paraguay y del programa de formación de los docentes en danza para finalizar con la propuesta de un modelo educativo basado en teorías cognitivo-constructivistas. La enseñanza de la danza en Paraguay está unificada, sistematizada y reglamentada a través de un único programa a nivel nacional. Esto permite a las academias de danzas privadas otorgar títulos profesionales con un aval oficial del Ministerio de Educación y Ciencias, por intermedio de la Dirección General de Educación en el Arte. El programa de estudios acompaña la educación formal y la evolución de los estudiantes desde los 7 hasta los 18 años, al término del cual, los educandos obtienen el título de Profesor Superior de Danzas. En el presente trabajo se recurrió a la revisión bibliográfica sobre temas inherentes a éste como el paradigma socio-crítico, la investigación-acción, la danza en un contexto científico, la investigación en el arte, educación en el arte, currículo y modelos educativos de manera a sustentar la propuesta a ser presentada. Con la finalidad de ahondar más en la situación actual de la danza en Paraguay, se realizó una investigación acción enmarcada dentro del paradigma sociocrítico aplicando como técnica de recolección de datos la revisión de documentos, entrevistas, encuestas y observaciones que arrojaron como resultado que el correr del tiempo y los cambios realizados en la estructura de la danza, entre otros factores, hicieron que esta estructura formal esté atravesando por una etapa difícil. Para paliar esta situación se realiza la propuesta de un modelo educativo basado en teorías cognitivo-constructivistas con el propósito de mejorar la formación de los docentes en danza y mantener la estructura que guía ese proceso metadata Espínola Torres, Lydia Marcela mail maleloni@gmail.com (2020) Formación del profesorado de danza en Paraguay: propuesta de un modelo educativo basado en teorías cognitivo-constructivistas. Doctoral thesis, Universidad Internacional Iberoamericana México.

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Resumen

La presente tesis realiza un estudio de la situación actual de la danza en Paraguay y del programa de formación de los docentes en danza para finalizar con la propuesta de un modelo educativo basado en teorías cognitivo-constructivistas. La enseñanza de la danza en Paraguay está unificada, sistematizada y reglamentada a través de un único programa a nivel nacional. Esto permite a las academias de danzas privadas otorgar títulos profesionales con un aval oficial del Ministerio de Educación y Ciencias, por intermedio de la Dirección General de Educación en el Arte. El programa de estudios acompaña la educación formal y la evolución de los estudiantes desde los 7 hasta los 18 años, al término del cual, los educandos obtienen el título de Profesor Superior de Danzas. En el presente trabajo se recurrió a la revisión bibliográfica sobre temas inherentes a éste como el paradigma socio-crítico, la investigación-acción, la danza en un contexto científico, la investigación en el arte, educación en el arte, currículo y modelos educativos de manera a sustentar la propuesta a ser presentada. Con la finalidad de ahondar más en la situación actual de la danza en Paraguay, se realizó una investigación acción enmarcada dentro del paradigma sociocrítico aplicando como técnica de recolección de datos la revisión de documentos, entrevistas, encuestas y observaciones que arrojaron como resultado que el correr del tiempo y los cambios realizados en la estructura de la danza, entre otros factores, hicieron que esta estructura formal esté atravesando por una etapa difícil. Para paliar esta situación se realiza la propuesta de un modelo educativo basado en teorías cognitivo-constructivistas con el propósito de mejorar la formación de los docentes en danza y mantener la estructura que guía ese proceso

Tipo de Documento: Tesis (Doctoral)
Palabras Clave: Modelo educativo; teorías cognitivo-constructivistas; educación en danza; formación del profesorado; investigación-acción; paradigma sociocrítico
Clasificación temática: Materias > Educación
Divisiones: Universidad Internacional Iberoamericana México > Investigación > Tesis Doctorales
Depositado: 11 Mar 2022 23:55
Ultima Modificación: 20 Sep 2023 23:30
URI: https://repositorio.unini.edu.mx/id/eprint/550

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