Adversarial Learned Fair Representations using Dampening and Stacking

03/16/2022
by   Max Knobbout, et al.
0

As more decisions in our daily life become automated, the need to have machine learning algorithms that make fair decisions increases. In fair representation learning we are tasked with finding a suitable representation of the data in which a sensitive variable is censored. Recent work aims to learn fair representations through adversarial learning. This paper builds upon this work by introducing a novel algorithm which uses dampening and stacking to learn adversarial fair representations. Results show that that our algorithm improves upon earlier work in both censoring and reconstruction.

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
11/15/2022

MMD-B-Fair: Learning Fair Representations with Statistical Testing

We introduce a method, MMD-B-Fair, to learn fair representations of data...
research
01/11/2021

Learning to Ignore: Fair and Task Independent Representations

Training fair machine learning models, aiming for their interpretability...
research
09/07/2020

Learning Unbiased Representations via Rényi Minimization

In recent years, significant work has been done to include fairness cons...
research
11/28/2022

Representation with Incomplete Votes

Platforms for online civic participation rely heavily on methods for con...
research
08/25/2022

Sustaining Fairness via Incremental Learning

Machine learning systems are often deployed for making critical decision...
research
09/27/2019

Learning Generative Adversarial RePresentations (GAP) under Fairness and Censoring Constraints

We present Generative Adversarial rePresentations (GAP) as a data-driven...

Please sign up or login with your details

Forgot password? Click here to reset