Browsing by Subject Wasserstein ambiguity

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  • Authors: Nam Ho-, Nguyen; Stephen J., Wright;  Advisor: -;  Co-Author: - (2022)

    We study a model for adversarial classification based on distributionally robust chance constraints. We show that under Wasserstein ambiguity, the model aims to minimize the conditional value-at-risk of the distance to misclassification, and we explore links to adversarial classification models proposed earlier and to maximum-margin classifiers. We also provide a reformulation of the distributionally robust model for linear classification, and show it is equivalent to minimizing a regularized ramp loss objective.