Evaluating Black-Box Vulnerabilities with Wasserstein-Constrained Data Perturbations
Abstract
The growing use of Machine Learning (ML) tools comes with critical challenges, such as limited model explainability. We propose a global explainability framework that leverages Optimal Transport and Distributionally Robust Optimization to analyze how ML algorithms respond to constrained data perturbations. Our approach enforces constraints on feature-level statistics (e.g., brightness, age distribution), generating realistic perturbations that preserve semantic structure. We provide a model-agnostic diagnostic bench that applies to both tabular and image domains with solid theoretical guarantees. We validate the approach on real-world datasets providing interpretable robustness diagnostics that complement standard evaluation and fairness auditing tools.
Cite
@article{arxiv.2603.15867,
title = {Evaluating Black-Box Vulnerabilities with Wasserstein-Constrained Data Perturbations},
author = {Adriana Laurindo Monteiro and Jean-Michel Loubes},
journal= {arXiv preprint arXiv:2603.15867},
year = {2026}
}