Analítica de aprendizaje en MOOC mediante métricas dinámicas en tiempo real

  1. León Urrutia, Manuel 2
  2. Vázquez Cano, Esteban 3
  3. López Meneses, Eloy 1
  1. 1 Universidad Pablo de Olavide
    info

    Universidad Pablo de Olavide

    Sevilla, España

    ROR https://ror.org/02z749649

  2. 2 University of Southampton
    info

    University of Southampton

    Southampton, Reino Unido

    ROR https://ror.org/01ryk1543

  3. 3 Universidad Nacional de Educación a Distancia
    info

    Universidad Nacional de Educación a Distancia

    Madrid, España

    ROR https://ror.org/02msb5n36

Revista:
@tic. revista d'innovació educativa

ISSN: 1989-3477

Año de publicación: 2017

Título del ejemplar: Spring (January-June)

Número: 18

Páginas: 38

Tipo: Artículo

DOI: 10.7203/ATTIC.18.10022 DIALNET GOOGLE SCHOLAR lock_openDialnet editor

Otras publicaciones en: @tic. revista d'innovació educativa

Resumen

Este artículo presenta el diseño y funcionamiento de una experiencia de analítica mediante una plataforma que ofrece métricas dinámicas en tiempo real denominada “MOOC Dashboard”. La experiencia se ha desarrollado por la Universidad de Southampton y la Universidad Autónoma de Madrid y se ha aplicado al análisis del funcionamiento en los cursos MOOC de la plataforma FutureLearn. El avance de la enseñanza en entornos masivos requiere, entre otras iniciativas, del conocimiento del desempeño del estudiante con respecto al diseño más o menos interactivo que ofrecen estos cursos. La visualización de métricas de aprendizaje y de la huella del estudiante en los cursos permite dinamizar y mejorar los entornos de cursos los MOOC. A través de un enfoque descriptivo-exploratorio se analiza el curso MOOC: “Digital Marketing: Challenges and Insights” ofrecido por la plataforma FutureLearn” y se presentan los resultados de la aplicación de métricas analíticas dinámicas en tiempo real al desempeño académico de los estudiantes.

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