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An Economic Perspective on Algorithmic Fairness
Ashesh Rambachan, Jon Kleinberg, Jens Ludwig, and Sendhil Mullainathan
AEA Papers and Proceedings. May 2020, Vol. 110, No. : Pages 91-95

An Economic Perspective on Algorithmic Fairness

Ashesh Rambachan1, Jon Kleinberg2, Jens Ludwig3 and Sendhil Mullainathan4

1Harvard University (email: )

2Cornell University (email: )

3University of Chicago and NBER (email: )

4University of Chicago and NBER (email: )

Abstract

There are widespread concerns that the growing use of machine learning algorithms in important decisions may reproduce and reinforce existing discrimination against legally protected groups. Most of the attention to date on issues of “algorithmic bias” or “algorithmic fairness” has come from computer scientists and machine learning researchers. We argue that concerns about algorithmic fairness are at least as much about questions of how discrimination manifests itself in data, decision-making under uncertainty, and optimal regulation. To fully answer these questions, an economic framework is necessary--and as a result, economists have much to contribute.