Montreal, Quebec, Canada
June 22, 2025
June 22, 2025
August 15, 2025
Computers in Education Division (COED) Poster Session (Track 1.A)
Computers in Education Division (COED)
12
10.18260/1-2--55919
https://peer.asee.org/55919
2
Dr. Ahmed Ashraf Butt is an Assistant Professor at the University of Oklahoma. He recently completed his Ph.D. in the School of Engineering Education at Purdue University and pursued post-doctoral training at the School of Computer Science, Carnegie Mellon University (CMU). He has cultivated a multidisciplinary research portfolio bridging learning sciences, Human-Computer Interaction (HCI), and engineering education. His primary research focuses on designing and developing educational technologies that facilitate various aspects of student learning, such as engagement. Additionally, he is interested in designing instructional interventions and exploring their relationship with first-year engineering (FYE) students’ learning aspects, including motivation and learning strategies. Prior to his time at Purdue, Dr. Butt worked as a lecturer at the University of Lahore, Pakistan, and has been associated with the software industry in various capacities.
An enormous amount of data is generated daily by educational tools used in traditional (e.g., colleges) and non-traditional (e.g., open online course provider; Coursera) learning environments. This data holds the potential to uncover valuable insights that can inform instructional decision-making. Despite the widespread adoption of data mining techniques in education, these methods often seem like a “black box” limiting educators’ ability to interpret their decision-making and outputs. To address this challenge, studies have explored the use of Explainable Artificial Intelligence (xAI) to improve the transparency and interpretation of data mining algorithms in educational settings. This work-in-progress study employs several data mining algorithms to extract critical insights from the publicly available extensive educational datasets. These datasets contain information on students’ perceived health status and its relation with their mental health, academic performance in college, and dropout rates. We then applied an xAI technique, i.e., SHAP (Shapley Additive explanations), to interpret and better understand the output of these algorithms. Preliminary findings reveal that the applied data mining algorithms, combined with xAI techniques, were able to identify key factors contributing to student academic performance, identify the early warning signs of mental or physical health concerns, and assess students at risk of dropping out. This work contributes to the current educational data mining literature by offering guidelines for integrating xAI methods with data mining algorithms to enhance their interpretability in educational contexts. The future direction of this work is to explore other xAI techniques and apply them to diverse educational datasets. Furthermore, future research is also needed to evaluate the impact of this combined approach (data mining model + xAI) on decision-making in practical educational settings.
babar, E. T. R., & Butt, A. A. (2025, June), BOARD #102: Work in Progress: Enhancing Transparency in Educational Decision-Making using XAI Technique Paper presented at 2025 ASEE Annual Conference & Exposition , Montreal, Quebec, Canada . 10.18260/1-2--55919
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