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SABAF: Removing Strong Attribute Bias from Neural Networks with Adversarial Filtering

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arxiv 2311.07141 v2 pith:F4GKEFK6 submitted 2023-11-13 cs.LG cs.CY

SABAF: Removing Strong Attribute Bias from Neural Networks with Adversarial Filtering

classification cs.LG cs.CY
keywords biasattributemethodstrongattributesneuralproposedremoving
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Ensuring a neural network is not relying on protected attributes (e.g., race, sex, age) for prediction is crucial in advancing fair and trustworthy AI. While several promising methods for removing attribute bias in neural networks have been proposed, their limitations remain under-explored. To that end, in this work, we mathematically and empirically reveal the limitation of existing attribute bias removal methods in presence of strong bias and propose a new method that can mitigate this limitation. Specifically, we first derive a general non-vacuous information-theoretical upper bound on the performance of any attribute bias removal method in terms of the bias strength, revealing that they are effective only when the inherent bias in the dataset is relatively weak. Next, we derive a necessary condition for the existence of any method that can remove attribute bias regardless of the bias strength. Inspired by this condition, we then propose a new method using an adversarial objective that directly filters out protected attributes in the input space while maximally preserving all other attributes, without requiring any specific target label. The proposed method achieves state-of-the-art performance in both strong and moderate bias settings. We provide extensive experiments on synthetic, image, and census datasets, to verify the derived theoretical bound and its consequences in practice, and evaluate the effectiveness of the proposed method in removing strong attribute bias.

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