2022
DOI: 10.48550/arxiv.2206.11423
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Input-agnostic Certified Group Fairness via Gaussian Parameter Smoothing

Abstract: Only recently, researchers attempt to provide classification algorithms with provable group fairness guarantees. Most of these algorithms suffer from harassment caused by the requirement that the training and deployment data follow the same distribution. This paper proposes an input-agnostic certified group fairness algorithm, FAIRSMOOTH, for improving the fairness of classification models while maintaining the remarkable prediction accuracy. A Gaussian parameter smoothing method is developed to transform base… Show more

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