Fair Normalizing Flows

06/10/2021
by   Mislav Balunović, et al.
0

Fair representation learning is an attractive approach that promises fairness of downstream predictors by encoding sensitive data. Unfortunately, recent work has shown that strong adversarial predictors can still exhibit unfairness by recovering sensitive attributes from these representations. In this work, we present Fair Normalizing Flows (FNF), a new approach offering more rigorous fairness guarantees for learned representations. Specifically, we consider a practical setting where we can estimate the probability density for sensitive groups. The key idea is to model the encoder as a normalizing flow trained to minimize the statistical distance between the latent representations of different groups. The main advantage of FNF is that its exact likelihood computation allows us to obtain guarantees on the maximum unfairness of any potentially adversarial downstream predictor. We experimentally demonstrate the effectiveness of FNF in enforcing various group fairness notions, as well as other attractive properties such as interpretability and transfer learning, on a variety of challenging real-world datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/17/2018

Learning Adversarially Fair and Transferable Representations

In this work, we advocate for representation learning as the key to miti...
research
10/19/2022

On Learning Fairness and Accuracy on Multiple Subgroups

We propose an analysis in fair learning that preserves the utility of th...
research
02/24/2020

Learning Certified Individually Fair Representations

To effectively enforce fairness constraints one needs to define an appro...
research
10/13/2022

FARE: Provably Fair Representation Learning

Fair representation learning (FRL) is a popular class of methods aiming ...
research
01/17/2022

Fair Group-Shared Representations with Normalizing Flows

The issue of fairness in machine learning stems from the fact that histo...
research
10/30/2019

DADI: Dynamic Discovery of Fair Information with Adversarial Reinforcement Learning

We introduce a framework for dynamic adversarial discovery of informatio...
research
05/31/2019

On the Fairness of Disentangled Representations

Recently there has been a significant interest in learning disentangled ...

Please sign up or login with your details

Forgot password? Click here to reset