Learning Fair Models without Sensitive Attributes: A Generative Approach
Huaisheng Zhu, Enyan Dai, Hui Liu, Suhang Wang

TL;DR
This paper introduces a generative framework to learn fair models without sensitive attributes by estimating them from relevant features, addressing privacy concerns and expanding fairness methods.
Contribution
It proposes a novel probabilistic approach to infer sensitive attributes from relevant features for fair modeling without needing explicit sensitive data.
Findings
Effective in improving fairness and accuracy on real datasets
Outperforms existing methods relying on sensitive attributes
Demonstrates robustness across different feature formats
Abstract
Most existing fair classifiers rely on sensitive attributes to achieve fairness. However, for many scenarios, we cannot obtain sensitive attributes due to privacy and legal issues. The lack of sensitive attributes challenges many existing fair classifiers. Though we lack sensitive attributes, for many applications, there usually exists features or information of various formats that are relevant to sensitive attributes. For example, purchase history of a person can reflect his or her race, which would help for learning fair classifiers on race. However, the work on exploring relevant features for learning fair models without sensitive attributes is rather limited. Therefore, in this paper, we study a novel problem of learning fair models without sensitive attributes by exploring relevant features. We propose a probabilistic generative framework to effectively estimate the sensitive…
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Taxonomy
TopicsEthics and Social Impacts of AI
