Fairness under uncertainty in sequential decisions
Michelle Seng Ah Lee, Kirtan Padh, David Watson, Niki Kilbertus, Jatinder Singh

TL;DR
This paper develops a framework for understanding and addressing fairness issues in sequential decision-making under uncertainty, highlighting how uneven information affects marginalized groups.
Contribution
It introduces a taxonomy of uncertainty types in sequential decisions and formalizes their impact on fairness, providing tools for diagnosis and mitigation.
Findings
Uncertainty causes disparities in decision outcomes for disadvantaged groups.
Uncertainty-aware exploration can improve fairness metrics.
Simulated experiments demonstrate how bias and feedback influence fairness.
Abstract
Fair machine learning (ML) methods help identify and mitigate the risk that algorithms encode or automate social injustices. Algorithmic approaches alone cannot resolve structural inequalities, but they can support socio-technical decision systems by surfacing discriminatory biases, clarifying trade-offs, and enabling governance. Although fairness is well studied in supervised learning, many real ML applications are online and sequential, with prior decisions informing future ones. Each decision is taken under uncertainty due to unobserved counterfactuals and finite samples, with dire consequences for under-represented groups, systematically under-observed due to historical exclusion and selective feedback. A bank cannot know whether a denied loan would have been repaid, and may have less data on marginalized populations. This paper introduces a taxonomy of uncertainty in sequential…
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