Equality of Opportunity in Supervised Learning
Google (United States) · The University of Texas at Austin · +1 more institution
Abstract
We propose a criterion for discrimination against a specified sensitive attribute in supervised learning, where the goal is to predict some target based on available features. Assuming data about the predictor, target, and membership in the protected group are available, we show how to optimally adjust any learned predictor so as to remove discrimination according to our definition. Our framework also improves incentives by shifting the cost of poor classification from disadvantaged groups to the decision maker, who can respond by improving the classification accuracy. In line with other studies, our notion is oblivious: it depends only on the joint statistics of the predictor, the target and the protected…
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Authors
3Topics & keywords
- Computer science
- Interpretation (philosophy)
- Disadvantaged
- Machine learning
- Artificial intelligence
- Incentive
- Decision maker
- Line (geometry)