AI RESEARCH
Price of Fairness in Short-Term and Long-Term Algorithmic Selections
arXiv CS.AI
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ArXi:2605.06227v1 Announce Type: new Algorithmic decision-making in high-stakes settings can have profound impacts on individuals and populations. While much prior work studies fairness in static settings, recent results show that enforcing static fairness constraints may exacerbate long-run disparities. Motivated by this tension, we study a stylized sequential selection problem in which a decision-maker repeatedly selects individuals, affecting both immediate utility and the population distribution over time. We.