Mean Field Analysis of Stochastic Neural Network Models with Synaptic Depression
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概要
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We investigated the effects of synaptic depression on the macroscopic behavior of stochastic neural networks. Dynamical mean field equations were derived for such networks by taking the average of two stochastic variables: a firing-state variable and a synaptic variable. In these equations, the average product of thesevariables is decoupled as the product of their averages because the two stochastic variables are independent. We proved the independence of these two stochastic variables assuming that the synaptic weight $J_{ij}$ is of the order of $1/N$ with respect to the number of neurons $N$. Using these equations, we derived macroscopic steady-state equations for a network with uniform connections and for a ring attractor network with Mexican hat type connectivity and investigated the stability of the steady-state solutions. An oscillatory uniform state was observed in the network with uniform connections owing to a Hopf instability. For the ring network, high-frequency perturbations were shown not to affect system stability. Two mechanisms destabilize the inhomogeneous steady state, leading to two oscillatory states. A Turing instability leads to a rotating bump state, while a Hopf instability leads to an oscillatory bump state, which was previously unreported. Various oscillatory states take place in a network with synaptic depression depending on the strength of the interneuron connections.
- 2010-08-15
著者
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Okada Masato
Graduate School Of Engineering Science Osaka University
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Oizumi Masafumi
Graduate School Of Frontier Sciences The University Of Tokyo
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Masafumi Oizumi
Graduate School of Frontier Sciences, The University of Tokyo, Kashiwa, Chiba 277-8561, Japan
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Igarashi Yasuhiko
Graduate School of Frontier Sciences, The University of Tokyo, Kashiwa, Chiba 277-8561, Japan
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Yasuhiko Igarashi
Graduate School of Frontier Sciences, The University of Tokyo, Kashiwa, Chiba 277-8561, Japan
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Igarashi Yasuhiko
Graduate School of Frontier Science, The University of Tokyo, Kashiwa, Chiba 277-8561, Japan
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