Journal article
Spiking neuron model for temporal sequence recognition
S Byrnes, AN Burkitt, DB Grayden, H Meffin
Neural Computation | M I T PRESS | Published : 2010
Abstract
A biologically inspired neuronal network that stores and recognizes temporal sequences of symbols is described. Each symbol is represented by excitatory input to distinct groups of neurons (symbol pools). Unambiguous storage of multiple sequences with common subsequences is ensured by partitioning each symbol pool into subpools that respond only when the current symbol has been preceded by a particular sequence of symbols. We describe synaptic structure and neural dynamics that permit the selective activation of subpools by the correct sequence. Symbols may have varying durations of the order of hundreds of milliseconds. Physiologically plausible plasticity mechanisms operate on a time scale..
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Awarded by Australian Research Council
Funding Acknowledgements
We thank Chris Trengove for a critical reading of the manuscript and detailed comments and Matthieu Gilson for development of the neuronal network program. This work was funded by the Australian Research Council ( ARC Discovery Project DP0771815) and the Bionic Ear Institute. The Bionic Ear Institute acknowledges the support it receives from the Victorian Government through its Operational Infrastructure Support Program.