Model-agnostic bias mitigation methods with regressor distribution control for Wasserstein-based fairness metrics

11/19/2021
by   Alexey Miroshnikov, et al.
0

This article is a companion paper to our earlier work Miroshnikov et al. (2021) on fairness interpretability, which introduces bias explanations. In the current work, we propose a bias mitigation methodology based upon the construction of post-processed models with fairer regressor distributions for Wasserstein-based fairness metrics. By identifying the list of predictors contributing the most to the bias, we reduce the dimensionality of the problem by mitigating the bias originating from those predictors. The post-processing methodology involves reshaping the predictor distributions by balancing the positive and negative bias explanations and allows for the regressor bias to decrease. We design an algorithm that uses Bayesian optimization to construct the bias-performance efficient frontier over the family of post-processed models, from which an optimal model is selected. Our novel methodology performs optimization in low-dimensional spaces and avoids expensive model retraining.

READ FULL TEXT

page 16

page 22

page 27

research
11/06/2020

Wasserstein-based fairness interpretability framework for machine learning models

In this article, we introduce a fairness interpretability framework for ...
research
12/20/2020

Biased Models Have Biased Explanations

We study fairness in Machine Learning (FairML) through the lens of attri...
research
01/31/2021

Priority-based Post-Processing Bias Mitigation for Individual and Group Fairness

Previous post-processing bias mitigation algorithms on both group and in...
research
10/26/2021

Post-processing for Individual Fairness

Post-processing in algorithmic fairness is a versatile approach for corr...
research
09/18/2023

Predictive Uncertainty-based Bias Mitigation in Ranking

Societal biases that are contained in retrieved documents have received ...
research
02/22/2023

Uncovering Bias in Face Generation Models

Recent advancements in GANs and diffusion models have enabled the creati...
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...

Please sign up or login with your details

Forgot password? Click here to reset