Bias mitigation for machine learning classifiers: A comprehensive survey
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 …
fairness in Machine Learning (ML) models. We collect a total of 341 publications concerning …
Algorithmic censoring in dynamic learning systems
Dynamic learning systems subject to selective labeling exhibit censoring, ie persistent
negative predictions assigned to one or more subgroups of points. In applications like …
negative predictions assigned to one or more subgroups of points. In applications like …
Designing Long-term Group Fair Policies in Dynamical Systems
Neglecting the effect that decisions have on individuals (and thus, on the underlying data
distribution) when designing algorithmic decision-making policies may increase inequalities …
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 …
online platforms that make instant decisions in lending, hiring, and education. When such …
Fairness and sequential decision making: Limits, lessons, and opportunities
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 …
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 …
optional personal information with a decision-making system, as seen in modern insurance …
Fair Classification with Partial Feedback: An Exploration-Based Data-Collection Approach
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 …
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 …
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 …
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
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 …
data and algorithmic biases have become a critical concern. From trivial cases like TV show …