research article
Slow fluctuations in recurrent networks of spiking neurons
2015
Networks of fast nonlinear elements may display slowfluctuations if interactions are strong. We find a transition in the long-term variability of a sparse recurrent network of perfect integrate-and-fire neurons at which the Fano factor switches from zero to infinity and the correlation time is minimized. This corresponds to a bifurcation in a linear map arising from the self-consistency of temporal input and output statistics. More realistic neural dynamics with a leak current and refractory period lead to smoothed transitions and modified critical couplings that can be theoretically predicted.
Type
research article
Web of Science ID
WOS:000362445200002
Author(s)
Date Issued
2015
Publisher
Published in
Volume
92
Issue
4
Article Number
040901(R)
Editorial or Peer reviewed
REVIEWED
Written at
EPFL
EPFL units
Available on Infoscience
October 14, 2015
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