资源论文A Random Matrix Approach to Echo-State Neural Networks

A Random Matrix Approach to Echo-State Neural Networks

2020-03-06 | |  55 |   48 |   0

Abstract

Recurrent neural networks, especially in their linear version, have provided many qualitative insights on their performance under different configurations. This article provides, through a novel random matrix framework, the quantitative counterpart of these performance results, specifically in the case of echo-state networks. Beyond mere insights, our approach conveys a deeper understanding on the core mechanism under play for both training and testing.

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