Aplicaciones interactivas basadas en el paquete SHINY/R para explicar conceptos estadísticosUn mapeo sistemático de la literatura

  1. Toledo San Martín, Álvaro 1
  2. Vicencio Pardo, Inés 1
  1. 1 Universidad Bernardo O'Higgins
    info

    Universidad Bernardo O'Higgins

    Santiago de Chile, Chile

    ROR https://ror.org/00x0xhn70

Revista:
Human Review: International Humanities Review / Revista Internacional de Humanidades

ISSN: 2695-9623

Año de publicación: 2023

Título del ejemplar: Monograph: "ICTs enter the classroom"

Volumen: 17

Número: 4

Tipo: Artículo

DOI: 10.37467/REVHUMAN.V12.4740 DIALNET GOOGLE SCHOLAR lock_openAcceso abierto editor

Otras publicaciones en: Human Review: International Humanities Review / Revista Internacional de Humanidades

Resumen

Shiny es una aplicación para el software R que permite la creación de interfaces para usuarios sin conocimiento de programación. En este trabajo utilizamos em método de mapeo sistemático para la recopilación, análisis y extracción de información en publicaciones que indican el uso de Shiny para explicar conceptos estadísticos. Dentro de las conclusiones se tiene que Shiny es utilizado como herramienta para la realización de experiencias académicas, además como medio para la solución de problemas en las áreas de educación y ciencias naturales y de la vida abordando tópicos de estadística relacionados con estadística pre-inferencial e inferencial, entre otros.

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