Learning grammatical structure with Echo State Networks

Volume: 20, Issue: 3, Pages: 424 - 432
Published: Apr 1, 2007
Abstract
Echo State Networks (ESNs) have been shown to be effective for a number of tasks, including motor control, dynamic time series prediction, and memorizing musical sequences. However, their performance on natural language tasks has been largely unexplored until now. Simple Recurrent Networks (SRNs) have a long history in language modeling and show a striking similarity in architecture to ESNs. A comparison of SRNs and ESNs on a natural language...
Paper Details
Title
Learning grammatical structure with Echo State Networks
Published Date
Apr 1, 2007
Volume
20
Issue
3
Pages
424 - 432
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