Learning recurrent dynamics in spiking networks

Spiking activity of neurons engaged in learning and performing a task show complex spatiotemporal dynamics. While the output of recurrent network models can learn to perform various tasks, the possible range of recurrent dynamics that emerge after learning remains unknown. Here we show that modifyin...

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Main Authors: Christopher M Kim, Carson C Chow
Format: Article
Language:English
Published: eLife Sciences Publications Ltd 2018-09-01
Series:eLife
Subjects:
Online Access:https://elifesciences.org/articles/37124
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spelling doaj-e38b8dc2db4449f7a71b51a2cc3aa65c2021-05-05T16:09:55ZengeLife Sciences Publications LtdeLife2050-084X2018-09-01710.7554/eLife.37124Learning recurrent dynamics in spiking networksChristopher M Kim0https://orcid.org/0000-0002-1322-6207Carson C Chow1https://orcid.org/0000-0003-1463-9553Laboratory of Biological Modeling, National Institute of Diabetes and Digestive and Kidney Diseases, National Institutes of Health, Bethesda, United StatesLaboratory of Biological Modeling, National Institute of Diabetes and Digestive and Kidney Diseases, National Institutes of Health, Bethesda, United StatesSpiking activity of neurons engaged in learning and performing a task show complex spatiotemporal dynamics. While the output of recurrent network models can learn to perform various tasks, the possible range of recurrent dynamics that emerge after learning remains unknown. Here we show that modifying the recurrent connectivity with a recursive least squares algorithm provides sufficient flexibility for synaptic and spiking rate dynamics of spiking networks to produce a wide range of spatiotemporal activity. We apply the training method to learn arbitrary firing patterns, stabilize irregular spiking activity in a network of excitatory and inhibitory neurons respecting Dale’s law, and reproduce the heterogeneous spiking rate patterns of cortical neurons engaged in motor planning and movement. We identify sufficient conditions for successful learning, characterize two types of learning errors, and assess the network capacity. Our findings show that synaptically-coupled recurrent spiking networks possess a vast computational capability that can support the diverse activity patterns in the brain.https://elifesciences.org/articles/37124spiking networkrecurrent dynamicslearninguniversal dynamics
collection DOAJ
language English
format Article
sources DOAJ
author Christopher M Kim
Carson C Chow
spellingShingle Christopher M Kim
Carson C Chow
Learning recurrent dynamics in spiking networks
eLife
spiking network
recurrent dynamics
learning
universal dynamics
author_facet Christopher M Kim
Carson C Chow
author_sort Christopher M Kim
title Learning recurrent dynamics in spiking networks
title_short Learning recurrent dynamics in spiking networks
title_full Learning recurrent dynamics in spiking networks
title_fullStr Learning recurrent dynamics in spiking networks
title_full_unstemmed Learning recurrent dynamics in spiking networks
title_sort learning recurrent dynamics in spiking networks
publisher eLife Sciences Publications Ltd
series eLife
issn 2050-084X
publishDate 2018-09-01
description Spiking activity of neurons engaged in learning and performing a task show complex spatiotemporal dynamics. While the output of recurrent network models can learn to perform various tasks, the possible range of recurrent dynamics that emerge after learning remains unknown. Here we show that modifying the recurrent connectivity with a recursive least squares algorithm provides sufficient flexibility for synaptic and spiking rate dynamics of spiking networks to produce a wide range of spatiotemporal activity. We apply the training method to learn arbitrary firing patterns, stabilize irregular spiking activity in a network of excitatory and inhibitory neurons respecting Dale’s law, and reproduce the heterogeneous spiking rate patterns of cortical neurons engaged in motor planning and movement. We identify sufficient conditions for successful learning, characterize two types of learning errors, and assess the network capacity. Our findings show that synaptically-coupled recurrent spiking networks possess a vast computational capability that can support the diverse activity patterns in the brain.
topic spiking network
recurrent dynamics
learning
universal dynamics
url https://elifesciences.org/articles/37124
work_keys_str_mv AT christophermkim learningrecurrentdynamicsinspikingnetworks
AT carsoncchow learningrecurrentdynamicsinspikingnetworks
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