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Fairness Through Computationally-Bounded Awareness

Machine Learning 2018-11-29 v2 Computational Complexity Data Structures and Algorithms

Abstract

We study the problem of fair classification within the versatile framework of Dwork et al. [ITCS '12], which assumes the existence of a metric that measures similarity between pairs of individuals. Unlike earlier work, we do not assume that the entire metric is known to the learning algorithm; instead, the learner can query this arbitrary metric a bounded number of times. We propose a new notion of fairness called metric multifairness and show how to achieve this notion in our setting. Metric multifairness is parameterized by a similarity metric dd on pairs of individuals to classify and a rich collection C{\cal C} of (possibly overlapping) "comparison sets" over pairs of individuals. At a high level, metric multifairness guarantees that similar subpopulations are treated similarly, as long as these subpopulations are identified within the class C{\cal C}.

Keywords

Cite

@article{arxiv.1803.03239,
  title  = {Fairness Through Computationally-Bounded Awareness},
  author = {Michael P. Kim and Omer Reingold and Guy N. Rothblum},
  journal= {arXiv preprint arXiv:1803.03239},
  year   = {2018}
}

Comments

Appears at NeurIPS 2018

R2 v1 2026-06-23T00:46:57.483Z