Learning Analytics to Assess Students’ Behavior With Scratch Through Clickstream
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Author
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Publication date
2018-06Abstract
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. This suposes a huge problem of time and no adecuate intime feedback to students while practicing programming activities.
The field of learning analytics has been a common practice in research since
last years due their great possibilities in terms of learning improvement. Such
possibilities can be a strong positive contribution in the field of computational
practice such as programming.
In this work we attempt to use learning analytics to ensure intime and quality
feedback through the analysis of students behavior in programming practice.
Hence, in order to help teachers in their assessments we propose a solution to
categorize and understand students’ behavior in programming activities using
business technics such as web clickstream.
Clickstream is a technique that consists in the collection and analysis of data
generated by users. We applied it in learning programming environments to study
students behavior to enhance students learning and programming skills.
The results of the work supports this business technique as useful and adequate in programming practice. The main finding showns a first taxonomy of
programming behaviors that can easily be used in a classroom. This will help
teachers to understand how students behave in their practice and consequently
enhance assessment and students’ following-up to avoid examination failures.
Document Type
Object of conference
Language
English
Subject (CDU)
004 - Computer science and technology. Computing. Data processing
62 - Engineering. Technology in general
Keywords
Dades massives
Ensenyament -- Innovacions tecnològiques
Pages
9 p.
Publisher
Proceedings of the Learning Analytics Summer Institute, León, 18-19 June 2018
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