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Input anticipating critical reservoirs show power law forgetting of unexpected input events

25 April 2014
N. Mayer
ArXiv (abs)PDFHTML
Abstract

Usually, reservoir computing shows an exponential memory decay. This paper investigates under which circumstances echo state networks can show a power law forgetting, which means traces of earlier events can be found in the reservoir for very long time spans. Such a setting requires critical connectivity exactly at the limit of what is permissible according the echo state condition. However, for general matrices the limit can not be determined exactly from theory. In addition, the behaviour of the network is strongly influenced by the input flow. Results are presented, that use certain types of restricted recurrent connectivity and anticipation learning with regard to the input, where indeed power law forgetting can be achieved.

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