TL;DR
This paper proposes a novel framework for fair classification that leverages non-sensitive features correlated with sensitive attributes, enabling fairness without requiring sensitive attribute data during training.
Contribution
It introduces a new approach that uses related features to promote fairness, with a theoretical basis and dynamic regularization for improved performance.
Findings
Effective in reducing bias without sensitive attributes
Maintains high classification accuracy
Dynamic feature regularization improves fairness
Abstract
Despite the rapid development and great success of machine learning models, extensive studies have exposed their disadvantage of inheriting latent discrimination and societal bias from the training data. This phenomenon hinders their adoption on high-stake applications. Thus, many efforts have been taken for developing fair machine learning models. Most of them require that sensitive attributes are available during training to learn fair models. However, in many real-world applications, it is usually infeasible to obtain the sensitive attributes due to privacy or legal issues, which challenges existing fair-ensuring strategies. Though the sensitive attribute of each data sample is unknown, we observe that there are usually some non-sensitive features in the training data that are highly correlated with sensitive attributes, which can be used to alleviate the bias. Therefore, in this…
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