Correlations between synapses in pairs of neurons slow down dynamics in randomly connected neural networks.

Journal: Physical review. E
Published Date:

Abstract

Networks of randomly connected neurons are among the most popular models in theoretical neuroscience. The connectivity between neurons in the cortex is however not fully random, the simplest and most prominent deviation from randomness found in experimental data being the overrepresentation of bidirectional connections among pyramidal cells. Using numerical and analytical methods, we investigate the effects of partially symmetric connectivity on the dynamics in networks of rate units. We consider the two dynamical regimes exhibited by random neural networks: the weak-coupling regime, where the firing activity decays to a single fixed point unless the network is stimulated, and the strong-coupling or chaotic regime, characterized by internally generated fluctuating firing rates. In the weak-coupling regime, we compute analytically, for an arbitrary degree of symmetry, the autocorrelation of network activity in the presence of external noise. In the chaotic regime, we perform simulations to determine the timescale of the intrinsic fluctuations. In both cases, symmetry increases the characteristic asymptotic decay time of the autocorrelation function and therefore slows down the dynamics in the network.

Authors

  • Daniel Martí
    Département d'Études Cognitives, École Normale Supérieure-PSL Research University, 75005 Paris, France; Institut Nationale de la Santé et de la Recherche Médicale, 75005 Paris, France; and Center for Theoretical Neuroscience, Columbia University, College of Physicians and Surgeons, New York, NY 10032, U.S.A. daniel.marti@ens.fr.
  • Nicolas Brunel
    Department of Statistics, The University of Chicago, Chicago, Illinois, USA.
  • Srdjan Ostojic
    Laboratoire de Neurosciences Cognitives, Inserm UMR No. 960, Ecole Normale Supérieure, PSL Research University, 75230 Paris, France.