Impartial Predictive Modeling: Ensuring Fairness in Arbitrary Models

Loading...
Thumbnail Image

Related Collections

Degree type

Discipline

Subject

Fairness-Aware Data Mining
Multiple Regression
Physical Sciences and Mathematics

Funder

Grant number

License

Copyright date

Distributor

Related resources

Contributor

Abstract

Fairness aware data mining aims to prevent algorithms from discriminating against protected groups. The literature has come to an impasse as to what constitutes explainable variability as opposed to discrimination. This stems from incomplete discussions of fairness in statistics. We demonstrate that fairness is achieved by ensuring impartiality with respect to sensitive characteristics. As these characteristics are determined outside of the model, the correct description of the statistical task is to ensure impartiality. We provide a framework for impartiality by accounting for different perspectives on the data generating process. This framework yields a set of impartial estimates that are applicable in a wide variety of situations and post-processing tools to correct estimates from arbitrary models. This effectively separates prediction and fairness goals, allowing modelers to focus on generating highly predictive models without incorporating the constraint of fairness.

Advisor

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Publication date

2016-01-01

Journal title

Statistical Science

Volume number

Issue number

Publisher

Publisher DOI

Journal Issues

Comments

Recommended citation

Collection