Costs and benefits of fair representation learning
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McNamara, Daniel
Ong, Cheng Soon
Williamson, Robert
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Association for Computing Machinery (ACM)
Abstract
Machine learning algorithms are increasingly used to make or
support important decisions about people’s lives. This has led to
interest in the problem of fair classification, which involves learning
to make decisions that are non-discriminatory with respect to a
sensitive variable such as race or gender. Several methods have been
proposed to solve this problem, including fair representation learning,
which cleans the input data used by the algorithm to remove
information about the sensitive variable. We show that using fair
representation learning as an intermediate step in fair classification
incurs a cost compared to directly solving the problem, which we
refer to as the cost of mistrust. We show that fair representation
learning in fact addresses a different problem, which is of interest
when the data user is not trusted to access the sensitive variable.
We quantify the benefits of fair representation learning, by showing
that any subsequent use of the cleaned data will not be too unfair.
The benefits we identify result from restricting the decisions of
adversarial data users, while the costs are due to applying those
same restrictions to other data users.
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AIES 2019 - Proceedings of the 2019 AAAI/ACM Conference on AI, Ethics, and Society
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Restricted until
2099-12-31
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