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arxiv: 1407.6803 · v1 · pith:XXINDICBnew · submitted 2014-07-25 · ❄️ cond-mat.dis-nn

Heterogeneous Mean Field for neural networks with short term plasticity

classification ❄️ cond-mat.dis-nn
keywords heterogeneousin-degreenetworksdistributiondynamicalfieldformulationmean-field
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We report about the main dynamical features of a model of leaky-integrate-and fire excitatory neurons with short term plasticity defined on random massive networks. We investigate the dynamics by a Heterogeneous Mean-Field formulation of the model, that is able to reproduce dynamical phases characterized by the presence of quasi-synchronous events. This formulation allows one to solve also the inverse problem of reconstructing the in-degree distribution for different network topologies from the knowledge of the global activity field. We study the robustness of this inversion procedure, by providing numerical evidence that the in-degree distribution can be recovered also in the presence of noise and disorder in the external currents. Finally, we discuss the validity of the heterogeneous mean-field approach for sparse networks, with a sufficiently large average in-degree.

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