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arxiv: 1912.03925 · v2 · pith:L342FPIS · submitted 2019-12-09 · math.ST · stat.TH

Over-parametrized deep neural networks do not generalize well

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classification math.ST stat.TH
keywords networksdeepneuraldatageneralizeover-parametrizedregressionwell
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Recently it was shown in several papers that backpropagation is able to find the global minimum of the empirical risk on the training data using over-parametrized deep neural networks. In this paper a similar result is shown for deep neural networks with the sigmoidal squasher activation function in a regression setting, and a lower bound is presented which proves that these networks do not generalize well on a new data in the sense that they do not achieve the optimal minimax rate of convergence for estimation of smooth regression functions.

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