CYLGApr 12, 2023

Maximal Fairness

arXiv:2304.06057v19 citationsh-index: 10
Originality Incremental advance
AI Analysis

This work provides a positive characterization for AI fairness, complementing negative impossibility results, which is incremental but useful for researchers and practitioners in fairness-aware machine learning.

The paper addresses the gap left by the Impossibility Theorem by identifying which combinations of fairness measures can be simultaneously satisfied, finding 12 maximal sets including seven with two measures and five with three measures.

Fairness in AI has garnered quite some attention in research, and increasingly also in society. The so-called "Impossibility Theorem" has been one of the more striking research results with both theoretical and practical consequences, as it states that satisfying a certain combination of fairness measures is impossible. To date, this negative result has not yet been complemented with a positive one: a characterization of which combinations of fairness notions are possible. This work aims to fill this gap by identifying maximal sets of commonly used fairness measures that can be simultaneously satisfied. The fairness measures used are demographic parity, equal opportunity, false positive parity, predictive parity, predictive equality, overall accuracy equality and treatment equality. We conclude that in total 12 maximal sets of these fairness measures are possible, among which seven combinations of two measures, and five combinations of three measures. Our work raises interest questions regarding the practical relevance of each of these 12 maximal fairness notions in various scenarios.

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