Starting Seatwork Earlier as a Valid Measure of Student Engagement
Ashish Gurung, Jionghao Lin, Zhongtian Huang, Conrad Borchers, Ryan S. Baker, Vincent Aleven, Kenneth R. Koedinger

TL;DR
This paper introduces and validates session-level measures of student self-regulation based on log data, demonstrating their reliability, predictive power for learning outcomes, and cross-system generalizability without additional instrumentation.
Contribution
It extends prior work by developing system-agnostic, session-level engagement measures from log data that predict learning outcomes and generalize across different educational platforms.
Findings
Session measures show high reliability (G > .75).
They improve prediction of final math scores beyond prior knowledge.
Measures generalize across different learning systems.
Abstract
Prior work has developed a range of automated measures ("detectors") of student self-regulation and engagement from student log data. These measures have been successfully used to make discoveries about student learning. Here, we extend this line of research to an underexplored aspect of self-regulation: students' decisions about when to start and stop working on learning software during classwork. In the first of two analyses, we build on prior work on session-level measures (e.g., delayed start, early stop) to evaluate their reliability and predictive validity. We compute these measures from year-long log data from Cognitive Tutor for students in grades 8-12 (N = 222). Our findings show that these measures exhibit moderate to high month-to-month reliability (G > .75), comparable to or exceeding gaming-the-system behavior. Additionally, they enhance the prediction of final math scores…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Innovative Teaching and Learning Methods · Online Learning and Analytics
