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Main Authors: Li, Zhen, Yang, Yunfei
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2206.05669
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author Li, Zhen
Yang, Yunfei
author_facet Li, Zhen
Yang, Yunfei
contents We study the uniform approximation of echo state networks with randomly generated internal weights. These models, in which only the readout weights are optimized during training, have made empirical success in learning dynamical systems. Recent results showed that echo state networks with ReLU activation are universal. In this paper, we give an alternative construction and prove that the universality holds for general activation functions. Specifically, our main result shows that, under certain condition on the activation function, there exists a sampling procedure for the internal weights so that the echo state network can approximate any continuous casual time-invariant operators with high probability. In particular, for ReLU activation, we give explicit construction for these sampling procedures. We also quantify the approximation error of the constructed ReLU echo state networks for sufficiently regular operators.
format Preprint
id arxiv_https___arxiv_org_abs_2206_05669
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Universality and approximation bounds for echo state networks with random weights
Li, Zhen
Yang, Yunfei
Machine Learning
Numerical Analysis
Neural and Evolutionary Computing
We study the uniform approximation of echo state networks with randomly generated internal weights. These models, in which only the readout weights are optimized during training, have made empirical success in learning dynamical systems. Recent results showed that echo state networks with ReLU activation are universal. In this paper, we give an alternative construction and prove that the universality holds for general activation functions. Specifically, our main result shows that, under certain condition on the activation function, there exists a sampling procedure for the internal weights so that the echo state network can approximate any continuous casual time-invariant operators with high probability. In particular, for ReLU activation, we give explicit construction for these sampling procedures. We also quantify the approximation error of the constructed ReLU echo state networks for sufficiently regular operators.
title Universality and approximation bounds for echo state networks with random weights
topic Machine Learning
Numerical Analysis
Neural and Evolutionary Computing
url https://arxiv.org/abs/2206.05669