Feb. 6, 2024, 5:41 a.m. | Valentina Cepeda Andr\'es G\'omez Shaoning Han

cs.LG updates on arXiv.org arxiv.org

We consider the problem of learning support vector machines robust to uncertainty. It has been established in the literature that typical loss functions, including the hinge loss, are sensible to data perturbations and outliers, thus performing poorly in the setting considered. In contrast, using the 0-1 loss or a suitable non-convex approximation results in robust estimators, at the expense of large computational costs. In this paper we use mixed-integer optimization techniques to derive a new loss function that better approximates …

approximation contrast cs.lg data functions hinge literature loss machines math.oc optimization outliers robust stat.co support support vector machines uncertainty vector via

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