LGFeb 16, 2025

A Critical Review of Predominant Bias in Neural Networks

arXiv:2502.11031v1h-index: 9
Originality Synthesis-oriented
AI Analysis

This work addresses a critical clarity issue for researchers in fair and trustworthy AI, though it is incremental as it reviews and unifies existing literature rather than introducing new methods.

The paper tackles the confusion between two predominant biases in neural networks—performance disparities across demographic groups and reliance on protected attributes—by providing mathematical definitions and validating their distinct nature through experiments on synthetic, census, and image datasets, showing that existing metrics vary in effectiveness for assessing these biases.

Bias issues of neural networks garner significant attention along with its promising advancement. Among various bias issues, mitigating two predominant biases is crucial in advancing fair and trustworthy AI: (1) ensuring neural networks yields even performance across demographic groups, and (2) ensuring algorithmic decision-making does not rely on protected attributes. However, upon the investigation of \pc papers in the relevant literature, we find that there exists a persistent, extensive but under-explored confusion regarding these two types of biases. Furthermore, the confusion has already significantly hampered the clarity of the community and subsequent development of debiasing methodologies. Thus, in this work, we aim to restore clarity by providing two mathematical definitions for these two predominant biases and leveraging these definitions to unify a comprehensive list of papers. Next, we highlight the common phenomena and the possible reasons for the existing confusion. To alleviate the confusion, we provide extensive experiments on synthetic, census, and image datasets, to validate the distinct nature of these biases, distinguish their different real-world manifestations, and evaluate the effectiveness of a comprehensive list of bias assessment metrics in assessing the mitigation of these biases. Further, we compare these two types of biases from multiple dimensions including the underlying causes, debiasing methods, evaluation protocol, prevalent datasets, and future directions. Last, we provide several suggestions aiming to guide researchers engaged in bias-related work to avoid confusion and further enhance clarity in the community.

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