FoCoa Shiny app for formative assessment using cognitive diagnosis modeling
- Susana Sanz 1
- Rodrigo S. Kreitchmann 1
- Pablo Nájera 1
- José David Moreno 1
- José Ángel Martínez-Huertas 2
- Miguel A. Sorrel 1
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1
Universidad Autónoma de Madrid
info
- 2 Universidad Nacional de Educación a Distancia, Madrid
ISSN: 1135-755X
Ano de publicación: 2023
Volume: 29
Número: 2
Páxinas: 149-158
Tipo: Artigo
Outras publicacións en: Psicología educativa
Resumo
La combinación de evaluaciones formativas y sumativas podría mejorar la evaluación. El modelado de diagnóstico cognitivo (MDC) se ha propuesto para diagnosticar fortalezas y debilidades de estudiantes en la evaluación formativa. Sin embargo, ningún software permite implementarlo fácilmente. Así, se ha desarrollado FoCo (https://foco.shinyapps.io/FoCo/), permitiendo realizar análisis MDC y teoría clásica de tests. Se analizaron respuestas de 86 estudiantes de grado a un examen de métodos de investigación, diagnosticándose sus fortalezas y necesidades en cuanto a su dominio de los contenidos de la asignatura y las tres primeras competencias de la taxonomía de Bloom y se analizó la validez de los resultados. El análisis ha sido informativo, ya que para estudiantes con puntuaciones similares ha sido posible detectar diferentes fortalezas y debilidades. Además, se encontró que estos atributos predicen criterios relevantes. Se espera que FoCo facilite el uso de MDC en contextos educativos.
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