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Dynamical Mean-Field Equations for a Neural Network with Spike Timing Dependent Plasticity
Authors:Jörg Mayer  Hong-Viet V Ngo  Heinz Georg Schuster
Institution:1.Department of Neuroendocrinology,University of Lübeck,Lübeck,Germany;2.Institute for Neuro- and Bioinformatics,University of Lübeck,Lübeck,Germany;3.Graduate School for Computing in Medicine and Life Science,University of Lübeck,Lübeck,Germany;4.Institute for Theoretical Physics and Astrophysics,Christian Albrecht University,Kiel,Germany
Abstract:We study the discrete dynamics of a fully connected network of threshold elements interacting via dynamically evolving synapses displaying spike timing dependent plasticity. Dynamical mean-field equations, which become exact in the thermodynamical limit, are derived to study the behavior of the system driven with uncorrelated and correlated Gaussian noise input. We use correlated noise to verify that our model gives account to the fact that correlated noise provides stronger drive for synaptic modification. Further we find that stochastic independent input leads to a noise dependent transition to the coherent state where all neurons fire together, most notably there exists an optimal noise level for the enhancement of synaptic potentiation in our model.
Keywords:
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