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Título
Clickstream for learning analytics to assess students’ behavior with Scratch
Autor(es)
Palabras clave
Clickstream
Scratch
Educational Data Mining
Learning analytics
Assessment
Clasificación UNESCO
1203.17 Informática
Fecha de publicación
2019
Editor
Elsevier (Amsterdam, Países Bajos)
Citación
Filvà, D. A., Forment, M. A., García-Peñalvo, F. J., Escudero, D. F., & Casañ, M. J. (2019). Clickstream for learning analytics to assess students’ behavior with Scratch. Future Generation Computer Systems, 93, 673-686.
Resumen
The construction of knowledge through computational practice requires to teachers a substantial amount
of time and effort to evaluate programming skills, to understand and to glimpse the evolution of the
students and finally to state a quantitative judgment in learning assessment. The field of learning analytics
has been a common practice in research since last years due to their great possibilities in terms of
learning improvement. Both, Big and Small data techniques support the analysis cycle of learning analytics
and risk of students’ failure prediction. Such possibilities can be a strong positive contribution to the
field of computational practice such as programming. Our main objective was to help teachers in their
assessments through to make those possibilities effective. Thus, we have developed a functional solution
to categorize and understand students’ behavior in programming activities based in Scratch. Through
collection and analysis of data generated by students’ clicks in Scratch, we proceed to execute both
exploratory and predictive analytics to detect patterns in students’ behavior when developing solutions
for assignments. We concluded that resultant taxonomy could help teachers to better support their
students by giving real-time quality feedback and act before students deliver incorrectly or at least
incomplete tasks.
URI
ISSN
0167-739X
DOI
10.1016/j.future.2018.10.057
Versión del editor
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