Computational aspects of feedback in neural circuits.

It has previously been shown that generic cortical microcircuit models can perform complex real-time computations on continuous input streams, provided that these computations can be carried out with a rapidly fading memory. We investigate the computational capability of such circuits in the more re...

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Main Authors: Wolfgang Maass, Prashant Joshi, Eduardo D Sontag
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2007-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC1779299?pdf=render
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spelling doaj-c1e632282de54aa1b1fbf2c3f64534f42020-11-25T01:57:43ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582007-01-0131e16510.1371/journal.pcbi.0020165Computational aspects of feedback in neural circuits.Wolfgang MaassPrashant JoshiEduardo D SontagIt has previously been shown that generic cortical microcircuit models can perform complex real-time computations on continuous input streams, provided that these computations can be carried out with a rapidly fading memory. We investigate the computational capability of such circuits in the more realistic case where not only readout neurons, but in addition a few neurons within the circuit, have been trained for specific tasks. This is essentially equivalent to the case where the output of trained readout neurons is fed back into the circuit. We show that this new model overcomes the limitation of a rapidly fading memory. In fact, we prove that in the idealized case without noise it can carry out any conceivable digital or analog computation on time-varying inputs. But even with noise, the resulting computational model can perform a large class of biologically relevant real-time computations that require a nonfading memory. We demonstrate these computational implications of feedback both theoretically, and through computer simulations of detailed cortical microcircuit models that are subject to noise and have complex inherent dynamics. We show that the application of simple learning procedures (such as linear regression or perceptron learning) to a few neurons enables such circuits to represent time over behaviorally relevant long time spans, to integrate evidence from incoming spike trains over longer periods of time, and to process new information contained in such spike trains in diverse ways according to the current internal state of the circuit. In particular we show that such generic cortical microcircuits with feedback provide a new model for working memory that is consistent with a large set of biological constraints. Although this article examines primarily the computational role of feedback in circuits of neurons, the mathematical principles on which its analysis is based apply to a variety of dynamical systems. Hence they may also throw new light on the computational role of feedback in other complex biological dynamical systems, such as, for example, genetic regulatory networks.http://europepmc.org/articles/PMC1779299?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Wolfgang Maass
Prashant Joshi
Eduardo D Sontag
spellingShingle Wolfgang Maass
Prashant Joshi
Eduardo D Sontag
Computational aspects of feedback in neural circuits.
PLoS Computational Biology
author_facet Wolfgang Maass
Prashant Joshi
Eduardo D Sontag
author_sort Wolfgang Maass
title Computational aspects of feedback in neural circuits.
title_short Computational aspects of feedback in neural circuits.
title_full Computational aspects of feedback in neural circuits.
title_fullStr Computational aspects of feedback in neural circuits.
title_full_unstemmed Computational aspects of feedback in neural circuits.
title_sort computational aspects of feedback in neural circuits.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2007-01-01
description It has previously been shown that generic cortical microcircuit models can perform complex real-time computations on continuous input streams, provided that these computations can be carried out with a rapidly fading memory. We investigate the computational capability of such circuits in the more realistic case where not only readout neurons, but in addition a few neurons within the circuit, have been trained for specific tasks. This is essentially equivalent to the case where the output of trained readout neurons is fed back into the circuit. We show that this new model overcomes the limitation of a rapidly fading memory. In fact, we prove that in the idealized case without noise it can carry out any conceivable digital or analog computation on time-varying inputs. But even with noise, the resulting computational model can perform a large class of biologically relevant real-time computations that require a nonfading memory. We demonstrate these computational implications of feedback both theoretically, and through computer simulations of detailed cortical microcircuit models that are subject to noise and have complex inherent dynamics. We show that the application of simple learning procedures (such as linear regression or perceptron learning) to a few neurons enables such circuits to represent time over behaviorally relevant long time spans, to integrate evidence from incoming spike trains over longer periods of time, and to process new information contained in such spike trains in diverse ways according to the current internal state of the circuit. In particular we show that such generic cortical microcircuits with feedback provide a new model for working memory that is consistent with a large set of biological constraints. Although this article examines primarily the computational role of feedback in circuits of neurons, the mathematical principles on which its analysis is based apply to a variety of dynamical systems. Hence they may also throw new light on the computational role of feedback in other complex biological dynamical systems, such as, for example, genetic regulatory networks.
url http://europepmc.org/articles/PMC1779299?pdf=render
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