Notes on Lipschitz Margin, Lipschitz Margin Training, and Lipschitz Margin p-Values for Deep Neural Network Classifiers

10/15/2019
by   George Kesidis, et al.
0

We provide a local class purity theorem for Lipschitz continuous, half-rectified DNN classifiers. In addition, we discuss how to train to achieve classification margin about training samples. Finally, we describe how to compute margin p-values for test samples.

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