Fairness Improvement with Multiple Protected Attributes: How Far Are We?

July 25, 2023 ยท Declared Dead ยท ๐Ÿ› International Conference on Software Engineering

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Authors Zhenpeng Chen, Jie M. Zhang, Federica Sarro, Mark Harman arXiv ID 2308.01923 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.CY, cs.SE Citations 19 Venue International Conference on Software Engineering Last Checked 3 months ago
Abstract
Existing research mostly improves the fairness of Machine Learning (ML) software regarding a single protected attribute at a time, but this is unrealistic given that many users have multiple protected attributes. This paper conducts an extensive study of fairness improvement regarding multiple protected attributes, covering 11 state-of-the-art fairness improvement methods. We analyze the effectiveness of these methods with different datasets, metrics, and ML models when considering multiple protected attributes. The results reveal that improving fairness for a single protected attribute can largely decrease fairness regarding unconsidered protected attributes. This decrease is observed in up to 88.3% of scenarios (57.5% on average). More surprisingly, we find little difference in accuracy loss when considering single and multiple protected attributes, indicating that accuracy can be maintained in the multiple-attribute paradigm. However, the effect on F1-score when handling two protected attributes is about twice that of a single attribute. This has important implications for future fairness research: reporting only accuracy as the ML performance metric, which is currently common in the literature, is inadequate.
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