Algorithmic Fairness with Feedback
- URL: http://arxiv.org/abs/2312.03155v1
- Date: Tue, 5 Dec 2023 21:42:14 GMT
- Title: Algorithmic Fairness with Feedback
- Authors: John W. Patty and Elizabeth Maggie Penn
- Abstract summary: We first show that statistical notions of fairness algorithms might satisfy in decisions based on noisy data are disconnected from welfare-based notions of fairness.
We then discuss two individual welfare-based notions of fairness, envy freeness and prejudice freeness, and establish conditions under which they are equivalent to error rate balance and predictive parity.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The field of algorithmic fairness has rapidly emerged over the past 15 years
as algorithms have become ubiquitous in everyday lives. Algorithmic fairness
traditionally considers statistical notions of fairness algorithms might
satisfy in decisions based on noisy data. We first show that these are
theoretically disconnected from welfare-based notions of fairness. We then
discuss two individual welfare-based notions of fairness, envy freeness and
prejudice freeness, and establish conditions under which they are equivalent to
error rate balance and predictive parity, respectively. We discuss the
implications of these findings in light of the recently discovered
impossibility theorem in algorithmic fairness (Kleinberg, Mullainathan, &
Raghavan (2016), Chouldechova (2017)).
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