Path-Specific Causal Reasoning for Fairness-aware Cognitive Diagnosis
Dacao Zhang, Kun Zhang, Le Wu, Mi Tian, Richang Hong, Meng Wang

TL;DR
This paper introduces a Path-Specific Causal Reasoning Framework (PSCRF) to improve fairness in cognitive diagnosis models by removing bias from sensitive student information while retaining useful data.
Contribution
The paper proposes a novel causal reasoning framework that decouples sensitive attributes from diagnosis predictions, balancing fairness and diagnostic accuracy.
Findings
PSCRF effectively reduces bias related to sensitive attributes.
The framework maintains high diagnostic accuracy.
Experimental results on real-world datasets validate its effectiveness.
Abstract
Cognitive Diagnosis~(CD), which leverages students and exercise data to predict students' proficiency levels on different knowledge concepts, is one of fundamental components in Intelligent Education. Due to the scarcity of student-exercise interaction data, most existing methods focus on making the best use of available data, such as exercise content and student information~(e.g., educational context). Despite the great progress, the abuse of student sensitive information has not been paid enough attention. Due to the important position of CD in Intelligent Education, employing sensitive information when making diagnosis predictions will cause serious social issues. Moreover, data-driven neural networks are easily misled by the shortcut between input data and output prediction, exacerbating this problem. Therefore, it is crucial to eliminate the negative impact of sensitive information…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Ethics and Social Impacts of AI · Cognitive Science and Mapping
MethodsFocus · PrIme Sample Attention
