Fair Risk Algorithms

Machine learning algorithms are becoming ubiquitous in modern life. When used to help inform human decision making, they have been criticized by some for insufficient accuracy, an absence of transparency, and unfairness. Many of these concerns can be legitimate, although they are less convincing whe...

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Bibliographic Details
Published in:Annual review of statistics and its application Vol. 10; no. 1; pp. 165 - 187
Main Authors: Berk, Richard A, Kuchibhotla, Arun Kumar, Tchetgen Tchetgen, Eric
Format: Journal Article
Language:English
Published: Annual Reviews 10-03-2023
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Summary:Machine learning algorithms are becoming ubiquitous in modern life. When used to help inform human decision making, they have been criticized by some for insufficient accuracy, an absence of transparency, and unfairness. Many of these concerns can be legitimate, although they are less convincing when compared with the uneven quality of human decisions. There is now a large literature in statistics and computer science offering a range of proposed improvements. In this article, we focus on machine learning algorithms used to forecast risk, such as those employed by judges to anticipate a convicted offender's future dangerousness and by physicians to help formulate a medical prognosis or ration scarce medical care. We review a variety of conceptual, technical, and practical features common to risk algorithms and offer suggestions for how their development and use might be meaningfully advanced. Fairness concerns are emphasized.
ISSN:2326-8298
2326-831X
DOI:10.1146/annurev-statistics-033021-120649