Data-driven modelling and characterisation of task completion sequences in online courses
Robert L. Peach, Sam F. Greenbury, Iain G. Johnston, Sophia, N. Yaliraki, David Lefevre, Mauricio Barahona

TL;DR
This paper presents a data-driven, sequence-based analysis of online course task completion, revealing behavioral patterns and critical tasks, and introduces a Bayesian model to predict student performance and inform course design.
Contribution
It introduces a novel sequence analysis framework combined with a Bayesian model to characterize learner behaviors and predict performance in online courses.
Findings
High performers follow weekly progressions more regularly.
Non-rote tasks correlate with higher performance.
Sequence analysis identifies critical course junctures.
Abstract
The intrinsic temporality of learning demands the adoption of methodologies capable of exploiting time-series information. In this study we leverage the sequence data framework and show how data-driven analysis of temporal sequences of task completion in online courses can be used to characterise personal and group learners' behaviors, and to identify critical tasks and course sessions in a given course design. We also introduce a recently developed probabilistic Bayesian model to learn sequence trajectories of students and predict student performance. The application of our data-driven sequence-based analyses to data from learners undertaking an on-line Business Management course reveals distinct behaviors within the cohort of learners, identifying learners or groups of learners that deviate from the nominal order expected in the course. Using course grades a posteriori, we explore…
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Taxonomy
TopicsOnline Learning and Analytics · Intelligent Tutoring Systems and Adaptive Learning · Online and Blended Learning
