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Title: Offline Contextual Bandits with High Probability Fairness Guarantees
We present RobinHood, an offline contextual bandit algorithm designed to satisfy a broad family of fairness constraints. Our algorithm accepts multiple fairness definitions and allows users to construct their own unique fairness definitions for the problem at hand. We provide a theoretical analysis of RobinHood, which includes a proof that it will not return an unfair solution with probability greater than a user-specified threshold. We validate our algorithm on three applications: a tutoring system in which we conduct a user study and consider multiple unique fairness definitions; a loan approval setting (using the Statlog German credit data set) in which well-known fairness definitions are applied; and criminal recidivism (using data released by ProPublica). In each setting, our algorithm is able to produce fair policies that achieve performance competitive with other offline and online contextual bandit algorithms.  more » « less
Award ID(s):
1763423 1453474
PAR ID:
10172840
Author(s) / Creator(s):
; ; ; ; ; ;
Date Published:
Journal Name:
Advances in neural information processing systems
Volume:
32
ISSN:
1049-5258
Page Range / eLocation ID:
14893-14904
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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