Literature DB >> 16160088

A learning rule for the emergence of stable dynamics and timing in recurrent networks.

Dean V Buonomano1.   

Abstract

Neural dynamics within recurrent cortical networks is an important component of neural processing. However, the learning rules that allow networks composed of hundreds or thousands of recurrently connected neurons to develop stable dynamical states are poorly understood. Here I use a neural network model to examine the emergence of stable dynamical states within recurrent networks. I describe a learning rule that can account both for the development of stable dynamics and guide networks to states that have been observed experimentally, specifically, states that instantiate a sparse code for time. Across trials, each neuron fires during a specific time window; by connecting the neurons to a hypothetical set of output units, it is possible to generate arbitrary spatial-temporal output patterns. Intertrial jitter of the spike time of a given neuron increases as a direct function of the delay at which it fires. These results establish a learning rule by which cortical networks can potentially process temporal information in a self-organizing manner, in the absence of specialized timing mechanisms.

Mesh:

Year:  2005        PMID: 16160088     DOI: 10.1152/jn.01250.2004

Source DB:  PubMed          Journal:  J Neurophysiol        ISSN: 0022-3077            Impact factor:   2.714


  35 in total

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8.  Chronic electrical stimulation homeostatically decreases spontaneous activity, but paradoxically increases evoked network activity.

Authors:  Anubhuti Goel; Dean V Buonomano
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9.  Recurrent Network Models of Sequence Generation and Memory.

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10.  A spike-timing pattern based neural network model for the study of memory dynamics.

Authors:  Jian K Liu; Zhen-Su She
Journal:  PLoS One       Date:  2009-07-24       Impact factor: 3.240

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