HaeJin Lee's Preliminary Exam
PhD candidate Haejin Lee will present her dissertation proposal, "Human-Centered Explainable AI To Support Metacognitive Strategies in Computer-Based Learning Environments." Her preliminary examination committee includes Assistant Professor Nigel Bosch (Chair), Associate Professor Jana Diesner, Assistant Professor JooYoung Seo, and Professor Michelle Perry.
Abstract
Explainable artificial intelligence (XAI) techniques have advanced the development of personalized interventions in computer-based learning environments. Although previous studies have shown that XAI-driven interventions can improve students’ learning outcomes and foster the use of metacognitive strategies, it remains unclear whether these systems might inadvertently introduce biases against certain groups of students (e.g., individuals diagnosed with attention deficit hyperactivity disorder [ADHD]). Additionally, how and why these interventions affect learning have not been thoroughly examined—gaps that are critical for evaluations of XAI-driven interventions in computer-based learning environments. Investigating these factors is important because it allows us to employ unbiased and effective approaches for integrating XAI into interventions. Motivated by these research gaps, this dissertation investigates the causes of biases within the predictive model used in building XAI-driven interventions to obtain actionable insights into mitigating potential biases (Chapter 2). Specifically, we use XAI to understand how traditional approaches to engineering metacognitive strategies lead to a biased predictive model. To uncover how XAI-driven interventions impact students’ learning outcomes, Chapter 3,examines the mediating role of learning pattern interactions (e.g., the use of metacognitive strategies) in the effectiveness of the XAI-driven intervention. Leveraging insights from Chapters 2 and 3, we will develop a human-centered, XAI-driven intervention that supports students’ effective use of metacognitive strategies in online learning (Chapter 4). In this intervention, students will determine how their learning pattern interactions should be measured, and the intervention is specifically designed to use these measures to limit the biases in the predictive model and ensure effective support. We will further examine the effectiveness of this intervention across diverse groups of students.
Question? Contact Haejin Lee.