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A Comprehensive Empirical Study of Bias Mitigation Methods for Machine Learning Classifiers.

Authors :
ZHENPENG CHEN
ZHANG, JIE M.
SARRO, FEDERICA
HARMAN, MARK
Source :
ACM Transactions on Software Engineering & Methodology; Jul2023, Vol. 32 Issue 4, p1-30, 30p
Publication Year :
2023

Abstract

Software bias is an increasingly important operational concern for software engineers. We present a largescale, comprehensive empirical study of 17 representative bias mitigation methods for Machine Learning (ML) classifiers, evaluated with 11 ML performance metrics (e.g., accuracy), 4 fairness metrics, and 20 types of fairness-performance tradeoff assessment, applied to 8 widely-adopted software decision tasks. The empirical coverage is much more comprehensive, covering the largest numbers of bias mitigation methods, evaluation metrics, and fairness-performance tradeoff measures compared to previous work on this important software property. We find that (1) the bias mitigation methods significantly decrease ML performance in 53% of the studied scenarios (ranging between 42%∼66% according to different ML performance metrics); (2) the bias mitigation methods significantly improve fairness measured by the 4 used metrics in 46% of all the scenarios (ranging between 24%∼59% according to different fairness metrics); (3) the bias mitigation methods even lead to decrease in both fairness and ML performance in 25% of the scenarios; (4) the effectiveness of the bias mitigation methods depends on tasks, models, the choice of protected attributes, and the set of metrics used to assess fairness and ML performance; (5) there is no bias mitigation method that can achieve the best tradeoff in all the scenarios. The best method that we find outperforms other methods in 30% of the scenarios. Researchers and practitioners need to choose the bias mitigation method best suited to their intended application scenario(s). [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1049331X
Volume :
32
Issue :
4
Database :
Complementary Index
Journal :
ACM Transactions on Software Engineering & Methodology
Publication Type :
Academic Journal
Accession number :
164663741
Full Text :
https://doi.org/10.1145/3583561