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Debiasing classifiers: is reality at variance with expectation?

Author

Listed:
  • Ashrya Agrawal
  • Florian Pfisterer
  • Bernd Bischl
  • Francois Buet-Golfouse
  • Srijan Sood
  • Jiahao Chen
  • Sameena Shah
  • Sebastian Vollmer

Abstract

We present an empirical study of debiasing methods for classifiers, showing that debiasers often fail in practice to generalize out-of-sample, and can in fact make fairness worse rather than better. A rigorous evaluation of the debiasing treatment effect requires extensive cross-validation beyond what is usually done. We demonstrate that this phenomenon can be explained as a consequence of bias-variance trade-off, with an increase in variance necessitated by imposing a fairness constraint. Follow-up experiments validate the theoretical prediction that the estimation variance depends strongly on the base rates of the protected class. Considering fairness--performance trade-offs justifies the counterintuitive notion that partial debiasing can actually yield better results in practice on out-of-sample data.

Suggested Citation

  • Ashrya Agrawal & Florian Pfisterer & Bernd Bischl & Francois Buet-Golfouse & Srijan Sood & Jiahao Chen & Sameena Shah & Sebastian Vollmer, 2020. "Debiasing classifiers: is reality at variance with expectation?," Papers 2011.02407, arXiv.org, revised May 2021.
  • Handle: RePEc:arx:papers:2011.02407
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