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Causality-Aided Trade-off Analysis for Machine Learning Fairness (2305.13057v3)

Published 22 May 2023 in cs.LG and cs.SE

Abstract: There has been an increasing interest in enhancing the fairness of ML. Despite the growing number of fairness-improving methods, we lack a systematic understanding of the trade-offs among factors considered in the ML pipeline when fairness-improving methods are applied. This understanding is essential for developers to make informed decisions regarding the provision of fair ML services. Nonetheless, it is extremely difficult to analyze the trade-offs when there are multiple fairness parameters and other crucial metrics involved, coupled, and even in conflict with one another. This paper uses causality analysis as a principled method for analyzing trade-offs between fairness parameters and other crucial metrics in ML pipelines. To ractically and effectively conduct causality analysis, we propose a set of domain-specific optimizations to facilitate accurate causal discovery and a unified, novel interface for trade-off analysis based on well-established causal inference methods. We conduct a comprehensive empirical study using three real-world datasets on a collection of widelyused fairness-improving techniques. Our study obtains actionable suggestions for users and developers of fair ML. We further demonstrate the versatile usage of our approach in selecting the optimal fairness-improving method, paving the way for more ethical and socially responsible AI technologies.

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Authors (4)
  1. Zhenlan Ji (11 papers)
  2. Pingchuan Ma (90 papers)
  3. Shuai Wang (466 papers)
  4. Yanhui Li (12 papers)
Citations (5)