Evaluating Black-Box Vulnerabilities with Wasserstein-Constrained Data Perturbations
arXiv cs.LG / 3/18/2026
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Key Points
- The paper tackles evaluating vulnerabilities of black-box ML models by using Optimal Transport and Wasserstein distance to study how changes in input variable distributions affect model behavior.
- It proposes finding the closest distribution, in the Wasserstein sense, that satisfies a specified perturbation constraint and analyzes its impact on model outputs.
- It provides convergence results for the projected distribution, establishing theoretical guarantees for the method.
- It demonstrates the method on real-world regression and classification datasets, illustrating practical use in robustness analysis.
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