Literature DB >> 23663149

Analysis of the stabilized supralinear network.

Yashar Ahmadian1, Daniel B Rubin, Kenneth D Miller.   

Abstract

We study a rate-model neural network composed of excitatory and inhibitory neurons in which neuronal input-output functions are power laws with a power greater than 1, as observed in primary visual cortex. This supralinear input-output function leads to supralinear summation of network responses to multiple inputs for weak inputs. We show that for stronger inputs, which would drive the excitatory subnetwork to instability, the network will dynamically stabilize provided feedback inhibition is sufficiently strong. For a wide range of network and stimulus parameters, this dynamic stabilization yields a transition from supralinear to sublinear summation of network responses to multiple inputs. We compare this to the dynamic stabilization in the balanced network, which yields only linear behavior. We more exhaustively analyze the two-dimensional case of one excitatory and one inhibitory population. We show that in this case, dynamic stabilization will occur whenever the determinant of the weight matrix is positive and the inhibitory time constant is sufficiently small, and analyze the conditions for supersaturation, or decrease of firing rates with increasing stimulus contrast (which represents increasing input firing rates). In work to be presented elsewhere, we have found that this transition from supralinear to sublinear summation can explain a wide variety of nonlinearities in cerebral cortical processing.

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Year:  2013        PMID: 23663149      PMCID: PMC4026108          DOI: 10.1162/NECO_a_00472

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  42 in total

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3.  Nature and interaction of signals from the receptive field center and surround in macaque V1 neurons.

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5.  How noise contributes to contrast invariance of orientation tuning in cat visual cortex.

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6.  The contribution of spike threshold to the dichotomy of cortical simple and complex cells.

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8.  Contrast gain control in the cat's visual system.

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  45 in total

1.  Inhibition stabilization is a widespread property of cortical networks.

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Review 2.  Canonical computations of cerebral cortex.

Authors:  Kenneth D Miller
Journal:  Curr Opin Neurobiol       Date:  2016-02-08       Impact factor: 6.627

3.  Central auditory neurons display flexible feature recombination functions.

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4.  Patterned perturbation of inhibition can reveal the dynamical structure of neural processing.

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5.  Visual attention and flexible normalization pools.

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6.  A Unifying Motif for Spatial and Directional Surround Suppression.

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Review 7.  Cortical computations via metastable activity.

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8.  Rapid Rebalancing of Excitation and Inhibition by Cortical Circuitry.

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9.  Lognormal firing rate distribution reveals prominent fluctuation-driven regime in spinal motor networks.

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10.  Mechanisms of Spatiotemporal Selectivity in Cortical Area MT.

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