Learning with Symmetric Label Noise: The Importance of Being Unhinged
May 28, 2015 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Brendan van Rooyen, Aditya Krishna Menon, Robert C. Williamson
arXiv ID
1505.07634
Category
cs.LG: Machine Learning
Citations
339
Venue
Neural Information Processing Systems
Last Checked
1 month ago
Abstract
Convex potential minimisation is the de facto approach to binary classification. However, Long and Servedio [2010] proved that under symmetric label noise (SLN), minimisation of any convex potential over a linear function class can result in classification performance equivalent to random guessing. This ostensibly shows that convex losses are not SLN-robust. In this paper, we propose a convex, classification-calibrated loss and prove that it is SLN-robust. The loss avoids the Long and Servedio [2010] result by virtue of being negatively unbounded. The loss is a modification of the hinge loss, where one does not clamp at zero; hence, we call it the unhinged loss. We show that the optimal unhinged solution is equivalent to that of a strongly regularised SVM, and is the limiting solution for any convex potential; this implies that strong l2 regularisation makes most standard learners SLN-robust. Experiments confirm the SLN-robustness of the unhinged loss.
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