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Autori principali: Jin, Jinqiu, Li, Haoxuan, Feng, Fuli
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.03255
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author Jin, Jinqiu
Li, Haoxuan
Feng, Fuli
author_facet Jin, Jinqiu
Li, Haoxuan
Feng, Fuli
contents Fairness has become a crucial aspect in the development of trustworthy machine learning algorithms. Current fairness metrics to measure the violation of demographic parity have the following drawbacks: (i) the average difference of model predictions on two groups cannot reflect their distribution disparity, and (ii) the overall calculation along all possible predictions conceals the extreme local disparity at or around certain predictions. In this work, we propose a novel fairness metric called Maximal Cumulative ratio Disparity along varying Predictions' neighborhood (MCDP), for measuring the maximal local disparity of the fairness-aware classifiers. To accurately and efficiently calculate the MCDP, we develop a provably exact and an approximate calculation algorithm that greatly reduces the computational complexity with low estimation error. We further propose a bi-level optimization algorithm using a differentiable approximation of the MCDP for improving the algorithmic fairness. Extensive experiments on both tabular and image datasets validate that our fair training algorithm can achieve superior fairness-accuracy trade-offs.
format Preprint
id arxiv_https___arxiv_org_abs_2406_03255
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On the Maximal Local Disparity of Fairness-Aware Classifiers
Jin, Jinqiu
Li, Haoxuan
Feng, Fuli
Machine Learning
Fairness has become a crucial aspect in the development of trustworthy machine learning algorithms. Current fairness metrics to measure the violation of demographic parity have the following drawbacks: (i) the average difference of model predictions on two groups cannot reflect their distribution disparity, and (ii) the overall calculation along all possible predictions conceals the extreme local disparity at or around certain predictions. In this work, we propose a novel fairness metric called Maximal Cumulative ratio Disparity along varying Predictions' neighborhood (MCDP), for measuring the maximal local disparity of the fairness-aware classifiers. To accurately and efficiently calculate the MCDP, we develop a provably exact and an approximate calculation algorithm that greatly reduces the computational complexity with low estimation error. We further propose a bi-level optimization algorithm using a differentiable approximation of the MCDP for improving the algorithmic fairness. Extensive experiments on both tabular and image datasets validate that our fair training algorithm can achieve superior fairness-accuracy trade-offs.
title On the Maximal Local Disparity of Fairness-Aware Classifiers
topic Machine Learning
url https://arxiv.org/abs/2406.03255