Controlling Neural Level Sets
Atzmon, Matan, Haim, Niv, Yariv, Lior, Israelov, Ofer, Maron, Haggai, Lipman, Yaron
–Neural Information Processing Systems
The level sets of neural networks represent fundamental properties such as decision boundaries of classifiers and are used to model non-linear manifold data such as curves and surfaces. Thus, methods for controlling the neural level sets could find many applications in machine learning. In this paper we present a simple and scalable approach to directly control level sets of a deep neural network. Our method consists of two parts: (i) sampling of the neural level sets, and (ii) relating the samples' positions to the network parameters. The latter is achieved by a sample network that is constructed by adding a single fixed linear layer to the original network.
Neural Information Processing Systems
Mar-18-2020, 21:15:52 GMT
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