Fair When Trained, Unfair When Deployed: Observable Fairness Measures are Unstable in Performative Prediction Settings

02/10/2022
by   Alan Mishler, et al.
0

Many popular algorithmic fairness measures depend on the joint distribution of predictions, outcomes, and a sensitive feature like race or gender. These measures are sensitive to distribution shift: a predictor which is trained to satisfy one of these fairness definitions may become unfair if the distribution changes. In performative prediction settings, however, predictors are precisely intended to induce distribution shift. For example, in many applications in criminal justice, healthcare, and consumer finance, the purpose of building a predictor is to reduce the rate of adverse outcomes such as recidivism, hospitalization, or default on a loan. We formalize the effect of such predictors as a type of concept shift-a particular variety of distribution shift-and show both theoretically and via simulated examples how this causes predictors which are fair when they are trained to become unfair when they are deployed. We further show how many of these issues can be avoided by using fairness definitions that depend on counterfactual rather than observable outcomes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/01/2021

FADE: FAir Double Ensemble Learning for Observable and Counterfactual Outcomes

Methods for building fair predictors often involve tradeoffs between fai...
research
09/07/2020

Fairness in Risk Assessment Instruments: Post-Processing to Achieve Counterfactual Equalized Odds

Algorithmic fairness is a topic of increasing concern both within resear...
research
11/02/2019

Fair Predictors under Distribution Shift

Recent work on fair machine learning adds to a growing set of algorithmi...
research
06/28/2019

Learning fair predictors with Sensitive Subspace Robustness

We consider an approach to training machine learning systems that are fa...
research
10/11/2020

Robust Fairness under Covariate Shift

Making predictions that are fair with regard to protected group membersh...
research
04/22/2019

Tracking and Improving Information in the Service of Fairness

As algorithmic prediction systems have become widespread, fears that the...
research
07/12/2022

Causal Conceptions of Fairness and their Consequences

Recent work highlights the role of causality in designing equitable deci...

Please sign up or login with your details

Forgot password? Click here to reset