LGCYJan 3, 2025

Exploring Equality: An Investigation into Custom Loss Functions for Fairness Definitions

arXiv:2501.01889v1h-index: 1
Originality Incremental advance
AI Analysis

This work addresses fairness issues in algorithmic decision-making for criminal justice systems, though it is incremental as it builds on existing theoretical frameworks.

This paper tackled the trade-offs between fairness metrics and predictive accuracy in the COMPAS system by developing neural networks with custom loss functions, including the first implementation of the Group Accuracy Parity (GAP) framework, and found that GAP achieves a better balance between fairness and accuracy compared to existing implementations.

This paper explores the complex tradeoffs between various fairness metrics such as equalized odds, disparate impact, and equal opportunity and predictive accuracy within COMPAS by building neural networks trained with custom loss functions optimized to specific fairness criteria. This paper creates the first fairness-driven implementation of the novel Group Accuracy Parity (GAP) framework, as theoretically proposed by Gupta et al. (2024), and applies it to COMPAS. To operationalize and accurately compare the fairness of COMPAS models optimized to differing fairness ideals, this paper develops and proposes a combinatory analytical procedure that incorporates Pareto front and multivariate analysis, leveraging data visualizations such as violin graphs. This paper concludes that GAP achieves an enhanced equilibrium between fairness and accuracy compared to COMPAS's current nationwide implementation and alternative implementations of COMPAS optimized to more traditional fairness definitions. While this paper's algorithmic improvements of COMPAS significantly augment its fairness, external biases undermine the fairness of its implementation. Practices such as predictive policing and issues such as the lack of transparency regarding COMPAS's internal workings have contributed to the algorithm's historical injustice. In conjunction with developments regarding COMPAS's predictive methodology, legal and institutional changes must happen for COMPAS's just deployment.

Foundations

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