Long Short-Term Memory in Echo State Networks: Details of a Simulation Study

  • Echo State Networks (ESNs) is an approach to design and train recurrent neural networks in supervised learning tasks. An important objective in many such tasks is to learn to exploit long-time dependencies in the processed signals ("long short-term memory" performance). Here we expose ESNs to a series of synthetic benchmark tasks that have been used in the literature to study the learnability of long-range temporal dependencies. This report provides all the detail necessary to replicate these experiments. It is intended to serve as the technical companion to a journal submission paper where the findings are analysed and compared to results obtained elsewhere with other learning paradigms.

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Publishing Institution:IRC-Library, Information Resource Center der Jacobs University Bremen
Author:Herbert Jaeger
Persistent Identifier (URN):urn:nbn:de:gbv:579-opus-1006386
Series (No.):Constructor University Technical Reports (27)
Document Type:Technical Report
Language:English
Date of First Publication:2012/02/01
School:SES School of Engineering and Science
Library of Congress Classification:Q Science / QA Mathematics (incl. computer science) / QA71-90 Instruments and machines / QA75.5-76.95 Electronic computers. Computer science / QA76.87 Neural computers. Neural networks

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