Learning with Symmetric Label Noise: The Importance of Being Unhinged
Rooyen, Brendan van, Menon, Aditya, Williamson, Robert C.
–Neural Information Processing Systems
Convex potential minimisation is the de facto approach to binary classification. However, Long and Servedio [2008] 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 [2008] result by virtue of being negatively unbounded.
Neural Information Processing Systems
Feb-14-2020, 04:44:51 GMT
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