Deterministic nonlinear spike train filtered by spiking neuron model

Details

Serval ID
serval:BIB_0DB677984560
Type
Article: article from journal or magazin.
Collection
Publications
Title
Deterministic nonlinear spike train filtered by spiking neuron model
Journal
Lecture Notes in Computer Science
Author(s)
Asai  Y., Yokoi  T., Villa  A. E. P.
ISSN
0302-9743
Publication state
Published
Issued date
2007
Peer-reviewed
Oui
Volume
4668
Pages
924-933
Language
english
Notes
Asai2007924
Abstract
Deterministic nonlinear dynamics has been observed in experimental electrophysiological recordings performed in several areas of the brain. However, little is known about the ability to transmit a complex temporally organized activity through different types of spiking neurons. This study investigates the response of a spiking neuron model representing three archetypical types (regular spiking, thalamocortical and resonator) to input spike trains composed of deterministic (chaotic) and stochastic processes with weak background activity. The comparison of the input and output spike trains allows to assess the transmission of information contained in the deterministic nonlinear dynamics. The pattern grouping algorithm (PGA) was applied to the output of the neuron to detect the dynamical attractor embedded in the original input spike train. The results show that the model of the thalamo-cortical neuron can be a better candidate than regular spiking and resonator type neurons in transmitting temporal information in a spatially organized neural network.
Keywords
Attractor
Web of science
Create date
23/08/2010 16:52
Last modification date
20/08/2019 13:34
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