Fairness-aware Regression Robust to Adversarial Attacks

11/04/2022
by   Yulu Jin, et al.
0

In this paper, we take a first step towards answering the question of how to design fair machine learning algorithms that are robust to adversarial attacks. Using a minimax framework, we aim to design an adversarially robust fair regression model that achieves optimal performance in the presence of an attacker who is able to add a carefully designed adversarial data point to the dataset or perform a rank-one attack on the dataset. By solving the proposed nonsmooth nonconvex-nonconcave minimax problem, the optimal adversary as well as the robust fairness-aware regression model are obtained. For both synthetic data and real-world datasets, numerical results illustrate that the proposed adversarially robust fair models have better performance on poisoned datasets than other fair machine learning models in both prediction accuracy and group-based fairness measure.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/17/2021

Poisoning Attacks on Fair Machine Learning

Both fair machine learning and adversarial learning have been extensivel...
research
06/15/2020

On Adversarial Bias and the Robustness of Fair Machine Learning

Optimizing prediction accuracy can come at the expense of fairness. Towa...
research
05/05/2022

Subverting Fair Image Search with Generative Adversarial Perturbations

In this work we explore the intersection fairness and robustness in the ...
research
10/22/2021

Fairness Degrading Adversarial Attacks Against Clustering Algorithms

Clustering algorithms are ubiquitous in modern data science pipelines, a...
research
02/11/2021

Fairness-Aware Learning from Corrupted Data

Addressing fairness concerns about machine learning models is a crucial ...
research
03/10/2019

Fair Logistic Regression: An Adversarial Perspective

Fair prediction methods have primarily been built around existing classi...
research
10/30/2019

DADI: Dynamic Discovery of Fair Information with Adversarial Reinforcement Learning

We introduce a framework for dynamic adversarial discovery of informatio...

Please sign up or login with your details

Forgot password? Click here to reset