Beyond incompatibility: Trade-offs between mutually exclusive fairness criteria in machine learning and law

被引:0
|
作者
Zehlike, Meike [1 ]
Loosley, Alex [1 ,2 ]
Jonsson, Hakan [3 ]
Wiedemann, Emil [4 ]
Hacker, Philipp [5 ]
机构
[1] Zalando Res, Berlin, Germany
[2] Echomotion GmbH, Munich, Germany
[3] Zalando, Berlin, Germany
[4] Friedrich Alexander Univ Erlangen Nurnberg, Dept Math, Erlangen, Germany
[5] European Univ Viadrina, European New Sch Digital Studies, Frankfurt, Oder, Germany
关键词
Machine learning fairness; Incompatible fairness definitions; Optimal transport; EU AI Act; ALGORITHMIC FAIRNESS; BIAS; REARRANGEMENT;
D O I
10.1016/j.artint.2024.104280
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Fair and trustworthy AI is becoming ever more important in both machine learning and legal domains. One important consequence is that decision makers must seek to guarantee a 'fair', i.e., non-discriminatory, algorithmic decision procedure. However, there are several competing notions of algorithmic fairness that have been shown to be mutually incompatible under realistic factual assumptions. This concerns, for example, the widely used fairness measures of 'calibration within groups' and 'balance for the positive/negative class,' which relate to accuracy, false negative and false positive rates, respectively. In this paper, we present a novel algorithm (FAir Interpolation Method: FAIM) for continuously interpolating between these three fairness criteria. Thus, an initially unfair prediction can be remedied to meet, at least partially, a desired, weighted combination of the respective fairness conditions. We demonstrate the effectiveness of our algorithm when applied to synthetic data, the COMPAS data set, and a new, real-world data set from the e-commerce sector. We provide guidance on using our algorithm in different high- stakes contexts, and we discuss to what extent FAIM can be harnessed to comply with conflicting legal obligations. The analysis suggests that it may operationalize duties in traditional legal fields, such as credit scoring and criminal justice proceedings, but also for the latest AI regulations put forth in the EU, like the Digital Markets Act and the recently enacted AI Act.
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页数:26
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