Learning Fair Naive Bayes Classifiers by Discovering and Eliminating Discrimination Patterns

Authors

  • YooJung Choi University of California, Los Angeles
  • Golnoosh Farnadi Mila
  • Behrouz Babaki Polytechnique Montreal
  • Guy Van den Broeck University of California, Los Angeles

DOI:

https://doi.org/10.1609/aaai.v34i06.6565

Abstract

As machine learning is increasingly used to make real-world decisions, recent research efforts aim to define and ensure fairness in algorithmic decision making. Existing methods often assume a fixed set of observable features to define individuals, but lack a discussion of certain features not being observed at test time. In this paper, we study fairness of naive Bayes classifiers, which allow partial observations. In particular, we introduce the notion of a discrimination pattern, which refers to an individual receiving different classifications depending on whether some sensitive attributes were observed. Then a model is considered fair if it has no such pattern. We propose an algorithm to discover and mine for discrimination patterns in a naive Bayes classifier, and show how to learn maximum-likelihood parameters subject to these fairness constraints. Our approach iteratively discovers and eliminates discrimination patterns until a fair model is learned. An empirical evaluation on three real-world datasets demonstrates that we can remove exponentially many discrimination patterns by only adding a small fraction of them as constraints.

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Published

2020-04-03

How to Cite

Choi, Y., Farnadi, G., Babaki, B., & Van den Broeck, G. (2020). Learning Fair Naive Bayes Classifiers by Discovering and Eliminating Discrimination Patterns. Proceedings of the AAAI Conference on Artificial Intelligence, 34(06), 10077-10084. https://doi.org/10.1609/aaai.v34i06.6565

Issue

Section

AAAI Technical Track: Reasoning under Uncertainty