An effect analysis of the balancing techniques on the counterfactual explanations of student success prediction models
Mustafa Cavus, Jakub Kuzilek

TL;DR
This paper evaluates various counterfactual explanation methods for student success prediction models, emphasizing their effectiveness, stability, and robustness in educational data analysis.
Contribution
It compares multiple counterfactual generation techniques and demonstrates their practical application using a real educational dataset.
Findings
Multi-Objective Counterfactual Explanations showed high stability.
Counterfactual methods provided actionable insights for model prediction changes.
Balancing techniques improved the robustness of explanations.
Abstract
In the past decade, we have experienced a massive boom in the usage of digital solutions in higher education. Due to this boom, large amounts of data have enabled advanced data analysis methods to support learners and examine learning processes. One of the dominant research directions in learning analytics is predictive modeling of learners' success using various machine learning methods. To build learners' and teachers' trust in such methods and systems, exploring the methods and methodologies that enable relevant stakeholders to deeply understand the underlying machine-learning models is necessary. In this context, counterfactual explanations from explainable machine learning tools are promising. Several counterfactual generation methods hold much promise, but the features must be actionable and causal to be effective. Thus, obtaining which counterfactual generation method suits the…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Online Learning and Analytics
