Cortical computations via transient attractors.

The ability of sensory networks to transiently store information on the scale of seconds can confer many advantages in processing time-varying stimuli. How a network could store information on such intermediate time scales, between typical neurophysiological time scales and those of long-term memory...

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Main Authors: Oliver L C Rourke, Daniel A Butts
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5720801?pdf=render
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spelling doaj-073c8fe4e5e640aab4f62daba69de8ed2020-11-24T22:07:25ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011212e018856210.1371/journal.pone.0188562Cortical computations via transient attractors.Oliver L C RourkeDaniel A ButtsThe ability of sensory networks to transiently store information on the scale of seconds can confer many advantages in processing time-varying stimuli. How a network could store information on such intermediate time scales, between typical neurophysiological time scales and those of long-term memory, is typically attributed to persistent neural activity. An alternative mechanism which might allow for such information storage is through temporary modifications to the neural connectivity which decay on the same second-long time scale as the underlying memories. Earlier work that has explored this method has done so by emphasizing one attractor from a limited, pre-defined set. Here, we describe an alternative, a Transient Attractor network, which can learn any pattern presented to it, store several simultaneously, and robustly recall them on demand using targeted probes in a manner reminiscent of Hopfield networks. We hypothesize that such functionality could be usefully embedded within sensory cortex, and allow for a flexibly-gated short-term memory, as well as conferring the ability of the network to perform automatic de-noising, and separation of input signals into distinct perceptual objects. We demonstrate that the stored information can be refreshed to extend storage time, is not sensitive to noise in the system, and can be turned on or off by simple neuromodulation. The diverse capabilities of transient attractors, as well as their resemblance to many features observed in sensory cortex, suggest the possibility that their actions might underlie neural processing in many sensory areas.http://europepmc.org/articles/PMC5720801?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Oliver L C Rourke
Daniel A Butts
spellingShingle Oliver L C Rourke
Daniel A Butts
Cortical computations via transient attractors.
PLoS ONE
author_facet Oliver L C Rourke
Daniel A Butts
author_sort Oliver L C Rourke
title Cortical computations via transient attractors.
title_short Cortical computations via transient attractors.
title_full Cortical computations via transient attractors.
title_fullStr Cortical computations via transient attractors.
title_full_unstemmed Cortical computations via transient attractors.
title_sort cortical computations via transient attractors.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description The ability of sensory networks to transiently store information on the scale of seconds can confer many advantages in processing time-varying stimuli. How a network could store information on such intermediate time scales, between typical neurophysiological time scales and those of long-term memory, is typically attributed to persistent neural activity. An alternative mechanism which might allow for such information storage is through temporary modifications to the neural connectivity which decay on the same second-long time scale as the underlying memories. Earlier work that has explored this method has done so by emphasizing one attractor from a limited, pre-defined set. Here, we describe an alternative, a Transient Attractor network, which can learn any pattern presented to it, store several simultaneously, and robustly recall them on demand using targeted probes in a manner reminiscent of Hopfield networks. We hypothesize that such functionality could be usefully embedded within sensory cortex, and allow for a flexibly-gated short-term memory, as well as conferring the ability of the network to perform automatic de-noising, and separation of input signals into distinct perceptual objects. We demonstrate that the stored information can be refreshed to extend storage time, is not sensitive to noise in the system, and can be turned on or off by simple neuromodulation. The diverse capabilities of transient attractors, as well as their resemblance to many features observed in sensory cortex, suggest the possibility that their actions might underlie neural processing in many sensory areas.
url http://europepmc.org/articles/PMC5720801?pdf=render
work_keys_str_mv AT oliverlcrourke corticalcomputationsviatransientattractors
AT danielabutts corticalcomputationsviatransientattractors
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