Bias mitigation for machine learning classifiers: A comprehensive survey

M Hort, Z Chen, JM Zhang, M Harman… - ACM Journal on …, 2024 - dl.acm.org
This article provides a comprehensive survey of bias mitigation methods for achieving
fairness in Machine Learning (ML) models. We collect a total of 341 publications concerning …

Algorithmic censoring in dynamic learning systems

J Chien, M Roberts, B Ustun - Proceedings of the 3rd ACM Conference …, 2023 - dl.acm.org
Dynamic learning systems subject to selective labeling exhibit censoring, ie persistent
negative predictions assigned to one or more subgroups of points. In applications like …

Designing Long-term Group Fair Policies in Dynamical Systems

M Rateike, I Valera, P Forré - The 2024 ACM Conference on Fairness …, 2024 - dl.acm.org
Neglecting the effect that decisions have on individuals (and thus, on the underlying data
distribution) when designing algorithmic decision-making policies may increase inequalities …

CARMA: A practical framework to generate recommendations for causal algorithmic recourse at scale

A Majumdar, I Valera - The 2024 ACM Conference on Fairness …, 2024 - dl.acm.org
Algorithms are increasingly used to automate large-scale decision-making processes, eg,
online platforms that make instant decisions in lending, hiring, and education. When such …

Fairness and sequential decision making: Limits, lessons, and opportunities

SB Nashed, J Svegliato, SL Blodgett - arXiv preprint arXiv:2301.05753, 2023 - arxiv.org
As automated decision making and decision assistance systems become common in
everyday life, research on the prevention or mitigation of potential harms that arise from …

I Prefer Not To Say: Protecting User Consent in Models with Optional Personal Data

T Leemann, M Pawelczyk, CT Eberle… - Proceedings of the AAAI …, 2024 - ojs.aaai.org
We examine machine learning models in a setup where individuals have the choice to share
optional personal information with a decision-making system, as seen in modern insurance …

Fair Classification with Partial Feedback: An Exploration-Based Data-Collection Approach

V Keswani, A Mehrotra, LE Celis - arXiv preprint arXiv:2402.11338, 2024 - arxiv.org
In many predictive contexts (eg, credit lending), true outcomes are only observed for
samples that were positively classified in the past. These past observations, in turn, form …

Adapting Fairness-Intervention Algorithms to Missing Data

R Feng - 2023 - dash.lib.harvard.edu
Missing values in real-world data pose a significant and unique challenge to algorithmic
fairness. Different demographic groups may be unequally affected by missing data, and …

Investigating trade-offs for fair machine learning systems

M Hort - 2023 - discovery.ucl.ac.uk
Fairness in software systems aims to provide algorithms that operate in a nondiscriminatory
manner, with respect to protected attributes such as gender, race, or age. Ensuring fairness …

[PDF][PDF] A Systematic Review on Human Roles, Solutions, and Methodological Approaches Towards Trustworthy AI

A HASHKY, ED RAGAN - researchgate.net
In today's world, where humans heavily rely on intelligent systems for everyday decisions,
data and algorithmic biases have become a critical concern. From trivial cases like TV show …