English

Decision-centric fairness: Evaluation and optimization for resource allocation problems

Machine Learning 2025-04-30 v1 Computers and Society

Abstract

Data-driven decision support tools play an increasingly central role in decision-making across various domains. In this work, we focus on binary classification models for predicting positive-outcome scores and deciding on resource allocation, e.g., credit scores for granting loans or churn propensity scores for targeting customers with a retention campaign. Such models may exhibit discriminatory behavior toward specific demographic groups through their predicted scores, potentially leading to unfair resource allocation. We focus on demographic parity as a fairness metric to compare the proportions of instances that are selected based on their positive outcome scores across groups. In this work, we propose a decision-centric fairness methodology that induces fairness only within the decision-making region -- the range of relevant decision thresholds on the score that may be used to decide on resource allocation -- as an alternative to a global fairness approach that seeks to enforce parity across the entire score distribution. By restricting the induction of fairness to the decision-making region, the proposed decision-centric approach avoids imposing overly restrictive constraints on the model, which may unnecessarily degrade the quality of the predicted scores. We empirically compare our approach to a global fairness approach on multiple (semi-synthetic) datasets to identify scenarios in which focusing on fairness where it truly matters, i.e., decision-centric fairness, proves beneficial.

Keywords

Cite

@article{arxiv.2504.20642,
  title  = {Decision-centric fairness: Evaluation and optimization for resource allocation problems},
  author = {Simon De Vos and Jente Van Belle and Andres Algaba and Wouter Verbeke and Sam Verboven},
  journal= {arXiv preprint arXiv:2504.20642},
  year   = {2025}
}
R2 v1 2026-06-28T23:15:09.841Z