2021
DOI: 10.48550/arxiv.2107.14324
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Deep Networks Provably Classify Data on Curves

Abstract: Data with low-dimensional nonlinear structure are ubiquitous in engineering and scientific problems. We study a model problem with such structure-a binary classification task that uses a deep fully-connected neural network to classify data drawn from two disjoint smooth curves on the unit sphere. Aside from mild regularity conditions, we place no restrictions on the configuration of the curves. We prove that when (i) the network depth is large relative to certain geometric properties that set the difficulty of… Show more

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