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On the Role of Noise in the Sample Complexity of...
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On the Role of Noise in the Sample Complexity of Learning Recurrent Neural Networks: Exponential Gaps for Long Sequences

Abstract

We consider the class of noisy multi-layered sigmoid recurrent neural networks with w (unbounded) weights for classification of sequences of length T, where independent noise distributed according to N(0, σ2) is added to the output of each neuron in the network. Our main result shows that the sample complexity of PAC learning this class can be bounded by O(wlog(T/σ)). For the non-noisy version of the same class (i.e., σ = 0), we prove a lower …

Authors

Pour AF; Ashtiani H

Volume

36

Publication Date

January 1, 2023

Conference proceedings

Advances in Neural Information Processing Systems

ISSN

1049-5258

Labels

Fields of Research (FoR)