Literature DB >> 27065365

Is cortical connectivity optimized for storing information?

Nicolas Brunel1,2.   

Abstract

Cortical networks are thought to be shaped by experience-dependent synaptic plasticity. Theoretical studies have shown that synaptic plasticity allows a network to store a memory of patterns of activity such that they become attractors of the dynamics of the network. Here we study the properties of the excitatory synaptic connectivity in a network that maximizes the number of stored patterns of activity in a robust fashion. We show that the resulting synaptic connectivity matrix has the following properties: it is sparse, with a large fraction of zero synaptic weights ('potential' synapses); bidirectionally coupled pairs of neurons are over-represented in comparison to a random network; and bidirectionally connected pairs have stronger synapses on average than unidirectionally connected pairs. All these features reproduce quantitatively available data on connectivity in cortex. This suggests synaptic connectivity in cortex is optimized to store a large number of attractor states in a robust fashion.

Mesh:

Year:  2016        PMID: 27065365     DOI: 10.1038/nn.4286

Source DB:  PubMed          Journal:  Nat Neurosci        ISSN: 1097-6256            Impact factor:   24.884


  38 in total

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9.  A Three-Threshold Learning Rule Approaches the Maximal Capacity of Recurrent Neural Networks.

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  37 in total

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6.  On the Structure of Cortical Microcircuits Inferred from Small Sample Sizes.

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Review 8.  Toward a Neurocentric View of Learning.

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Review 10.  Neocortex: a lean mean memory storage machine.

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