CVLGAPAug 22, 2023

Fairness Explainability using Optimal Transport with Applications in Image Classification

arXiv:2308.11090v22 citationsh-index: 10
Originality Incremental advance
AI Analysis

This addresses the need for transparency and fairness in AI systems, especially in critical decision-making domains, but appears incremental as it builds on existing fairness and explainability techniques.

The paper tackles the problem of explaining why machine learning models are biased, particularly in image classification, by proposing a method using optimal transport theory to uncover causes of discrimination and measure feature influence on bias.

Ensuring trust and accountability in Artificial Intelligence systems demands explainability of its outcomes. Despite significant progress in Explainable AI, human biases still taint a substantial portion of its training data, raising concerns about unfairness or discriminatory tendencies. Current approaches in the field of Algorithmic Fairness focus on mitigating such biases in the outcomes of a model, but few attempts have been made to try to explain \emph{why} a model is biased. To bridge this gap between the two fields, we propose a comprehensive approach that uses optimal transport theory to uncover the causes of discrimination in Machine Learning applications, with a particular emphasis on image classification. We leverage Wasserstein barycenters to achieve fair predictions and introduce an extension to pinpoint bias-associated regions. This allows us to derive a cohesive system which uses the enforced fairness to measure each features influence \emph{on} the bias. Taking advantage of this interplay of enforcing and explaining fairness, our method hold significant implications for the development of trustworthy and unbiased AI systems, fostering transparency, accountability, and fairness in critical decision-making scenarios across diverse domains.

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