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Published July 8, 2014 | Published
Journal Article Open

Learning and stabilization of winner-take-all dynamics through interacting excitatory and inhibitory plasticity

Abstract

Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory neurons that represent promising candidate microcircuits for implementing cortical computation. WTAs can perform powerful computations, ranging from signal restoration to state-dependent processing. However, such networks require fine tuned connectivity parameters to keep the network dynamics within stable operating regimes. In this article, we show how such stability can emerge autonomously through an interaction of biologically plausible plasticity mechanisms that operate simultaneously on all excitatory and inhibitory synapses of the network. A weight-dependent plasticity rule is derived from the triplet spike-timing dependent plasticity model, and its stabilization properties in the mean field case are analyzed using contraction theory. Our main result provides simple constraints on the plasticity rule parameters, rather than on the weights themselves, which guarantee stable WTA behavior. The plastic network we present is able to adapt to changing input conditions, and to dynamically adjust its gain, therefore exhibiting self-stabilization mechanisms that are crucial for maintaining stable operation in large networks of interconnected subunits. We show how distributed neural assemblies can adjust their parameters for stable WTA function autonomously while respecting anatomical constraints on neural wiring.

Additional Information

© 2014 Binas, Rutishauser, Indiveri and Pfeiffer. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. Received: 15 April 2014; Accepted: 16 June 2014; Published on line: 08 July 2014. The research was supported by the Swiss National Science Foundation Grant 200021_146608, and the European Union ERC Grant "neuroP" (257219). We thank Rodney Douglas, Peter Diehl, Roman Bauer, and our colleagues at the Institute of Neuroinformatics for fruitful discussion.

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