HaeJin Lee’s research while affiliated with University of Illinois Urbana-Champaign and other places

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Publications (3)


XAI Reveals the Causes of Attention Deficit Hyperactivity Disorder (ADHD) Bias in Student Performance Prediction
  • Conference Paper

March 2025

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6 Reads

HaeJin Lee

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Clara Belitz

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Nigel Bosch

Screenshot of a main menu of the learning software (top) and an illustration of an incorrect quiz question attempted by a student (bottom). Note. If a student’s quiz answer was wrong, we displayed that information, but did not display the correct answer
Sankey Diagram Displaying Students’ Usage of Frequent Learning Patterns. Note. To interpret the diagram, begin from the leftmost label, Quiz. This starting point branches into four distinct frequent learning patterns: transitioning from Quiz to Read, Quiz to Summary, Quiz to Example, and Quiz to another Quiz
Full questions for test A and test B and the corresponding correct response rate for each question
Subtopic-specific heterogeneity in computer-based learning behaviors
  • Article
  • Full-text available

December 2024

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28 Reads

International Journal of STEM Education

Background Self-regulated learning (SRL) strategies can be domain specific. However, it remains unclear whether this specificity extends to different subtopics within a single subject domain. In this study, we collected data from 210 college students engaged in a computer-based learning environment to examine the heterogeneous manifestations of learning behaviors across four distinct subtopics in introductory statistics. Further, we explore how the time spent engaging in metacognitive strategies correlated with learning gain in those subtopics. Results By employing two different analytical approaches that combine data-driven learning analytics (i.e., sequential pattern mining in this case), and theory-informed methods (i.e., coherence analysis), we discovered significant variability in the frequency of learning patterns that are potentially associated with SRL-relevant strategies across four subtopics. In a subtopic related to calculations, engagement in coherent quizzes (i.e., a type of metacognitive strategy) was found to be significantly less related to learning gains compared to other subtopics. Additionally, we found that students with different levels of prior knowledge and learning gains demonstrated varying degrees of engagement in learning patterns in an SRL context. Conclusion The findings imply that the use—and the effectiveness—of learning patterns that are potentially associated with SRL-relevant strategies varies not only across contexts and domains, but even across different subtopics within a single subject. This underscores the importance of personalized, context-aware SRL training interventions in computer-based learning environments, which could significantly enhance learning outcomes by addressing the heterogeneous relationships between SRL activities and outcomes. Further, we suggest theoretical implications of subtopic-specific heterogeneity within the context of various SRL models. Understanding SRL heterogeneity enhances these theories, offering more nuanced insights into learners’ metacognitive strategies across different subtopics.

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Citations (1)


... Studies on Bayesian Knowledge Tracing and carelessness detectors have shown promising results, with performance being relatively equal across demographic groups (Zambrano et al., 2024). However, traditional bias metrics may not be suitable for educational settings due to hierarchical dependencies in classrooms, necessitating adapted measurements using hierarchical linear models (Belitz et al., 2024). To address these challenges, researchers recommend focusing on solidifying understanding of concrete impacts, moving from unknown to known bias, and transitioning from fairness to equity (Baker & Hawn, 2021). ...

Reference:

Algorithmic bias in educational systems: Examining the impact of AI-driven decision making in modern education
Hierarchical Dependencies in Classroom Settings Influence Algorithmic Bias Metrics
  • Citing Conference Paper
  • March 2024