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AI Fairness (Designing Equal Opportunity Algorithms)
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Product Details
Author:
Derek Leben
Format:
Paperback
Pages:
240
Publisher:
MIT Press (May 13, 2025)
Language:
English
Audience:
General/trade
ISBN-13:
9780262552363
ISBN-10:
0262552361
Weight:
10.4oz
Dimensions:
6.06" x 9" x 0.63"
File:
RandomHouse-PRH_Book_Company_PRH_PRT_Onix_full_active_D20260405T171353_155746860-20260405.xml
Folder:
RandomHouse
List Price:
$55.00
Country of Origin:
United States
Pub Discount:
65
Case Pack:
20
As low as:
$42.35
Publisher Identifier:
P-RH
Discount Code:
A
QuickShip:
Yes
Imprint:
The MIT Press
Overview
A theory of justice for AI models making decisions about employment, lending, education, criminal justice, and other important social goods.
Decisions about important social goods like education, employment, housing, loans, health care, and criminal justice are all becoming increasingly automated with the help of AI. But because AI models are trained on data with historical inequalities, they often produce unequal outcomes for members of disadvantaged groups. In AI Fairness, Derek Leben draws on traditional philosophical theories of fairness to develop a framework for evaluating AI models, which can be called a theory of algorithmic justice—a theory inspired by the theory of justice developed by the American philosopher John Rawls.
For several years now, researchers who design AI models have investigated the causes of inequalities in AI decisions and proposed techniques for mitigating them. It turns out that in most realistic conditions it is impossible to comply with all metrics simultaneously. Because of this, companies using AI systems will have to choose which metric they think is the correct measure of fairness, and regulators will need to determine how to apply currently existing laws to AI systems. Leben provides a detailed set of practical recommendations for companies looking to evaluate their AI systems and regulators thinking about laws around AI systems, and he offers an honest analysis of the costs of implementing fairness in AI systems—as well as when these costs may or may not be acceptable.
Decisions about important social goods like education, employment, housing, loans, health care, and criminal justice are all becoming increasingly automated with the help of AI. But because AI models are trained on data with historical inequalities, they often produce unequal outcomes for members of disadvantaged groups. In AI Fairness, Derek Leben draws on traditional philosophical theories of fairness to develop a framework for evaluating AI models, which can be called a theory of algorithmic justice—a theory inspired by the theory of justice developed by the American philosopher John Rawls.
For several years now, researchers who design AI models have investigated the causes of inequalities in AI decisions and proposed techniques for mitigating them. It turns out that in most realistic conditions it is impossible to comply with all metrics simultaneously. Because of this, companies using AI systems will have to choose which metric they think is the correct measure of fairness, and regulators will need to determine how to apply currently existing laws to AI systems. Leben provides a detailed set of practical recommendations for companies looking to evaluate their AI systems and regulators thinking about laws around AI systems, and he offers an honest analysis of the costs of implementing fairness in AI systems—as well as when these costs may or may not be acceptable.








