The Sequence Matters in Learning -- A Systematic Literature Review
- URL: http://arxiv.org/abs/2308.01218v2
- Date: Tue, 12 Dec 2023 18:04:35 GMT
- Title: The Sequence Matters in Learning -- A Systematic Literature Review
- Authors: Manuel Valle Torre, Catharine Oertel, Marcus Specht
- Abstract summary: Describing and analysing learner behaviour using sequential data and analysis is becoming more and more popular in Learning Analytics.
We found a variety of definitions of learning sequences, as well as choices regarding data aggregation and the methods implemented for analysis.
sequences are used to study different educational settings and serve as a base for various interventions.
- Score: 0.25322020135765466
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Describing and analysing learner behaviour using sequential data and analysis
is becoming more and more popular in Learning Analytics. Nevertheless, we found
a variety of definitions of learning sequences, as well as choices regarding
data aggregation and the methods implemented for analysis. Furthermore,
sequences are used to study different educational settings and serve as a base
for various interventions. In this literature review, the authors aim to
generate an overview of these aspects to describe the current state of using
sequence analysis in educational support and learning analytics. The 74
included articles were selected based on the criteria that they conduct
empirical research on an educational environment using sequences of learning
actions as the main focus of their analysis. The results enable us to highlight
different learning tasks where sequences are analysed, identify data mapping
strategies for different types of sequence actions, differentiate techniques
based on purpose and scope, and identify educational interventions based on the
outcomes of sequence analysis.
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