FAE: A Fairness-Aware Ensemble Framework

02/03/2020
by   Vasileios Iosifidis, et al.
5

Automated decision making based on big data and machine learning (ML) algorithms can result in discriminatory decisions against certain protected groups defined upon personal data like gender, race, sexual orientation etc. Such algorithms designed to discover patterns in big data might not only pick up any encoded societal biases in the training data, but even worse, they might reinforce such biases resulting in more severe discrimination. The majority of thus far proposed fairness-aware machine learning approaches focus solely on the pre-, in- or post-processing steps of the machine learning process, that is, input data, learning algorithms or derived models, respectively. However, the fairness problem cannot be isolated to a single step of the ML process. Rather, discrimination is often a result of complex interactions between big data and algorithms, and therefore, a more holistic approach is required. The proposed FAE (Fairness-Aware Ensemble) framework combines fairness-related interventions at both pre- and postprocessing steps of the data analysis process. In the preprocessing step, we tackle the problems of under-representation of the protected group (group imbalance) and of class-imbalance by generating balanced training samples. In the post-processing step, we tackle the problem of class overlapping by shifting the decision boundary in the direction of fairness.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/13/2022

Towards A Holistic View of Bias in Machine Learning: Bridging Algorithmic Fairness and Imbalanced Learning

Machine learning (ML) is playing an increasingly important role in rende...
research
08/25/2021

Social Norm Bias: Residual Harms of Fairness-Aware Algorithms

Many modern learning algorithms mitigate bias by enforcing fairness acro...
research
10/01/2021

A survey on datasets for fairness-aware machine learning

As decision-making increasingly relies on machine learning and (big) dat...
research
08/02/2017

Fairness-aware machine learning: a perspective

Algorithms learned from data are increasingly used for deciding many asp...
research
09/17/2019

AdaFair: Cumulative Fairness Adaptive Boosting

The widespread use of ML-based decision making in domains with high soci...
research
02/02/2022

Normalise for Fairness: A Simple Normalisation Technique for Fairness in Regression Machine Learning Problems

Algorithms and Machine Learning (ML) are increasingly affecting everyday...
research
03/02/2018

Impact of Biases in Big Data

The underlying paradigm of big data-driven machine learning reflects the...

Please sign up or login with your details

Forgot password? Click here to reset