Self-organization of a recurrent network under ongoing synaptic plasticity.

Journal: Neural networks : the official journal of the International Neural Network Society
PMID:

Abstract

We investigated the organization of a recurrent network under ongoing synaptic plasticity using a model of neural oscillators coupled by dynamic synapses. In this model, the coupling weights changed dynamically, depending on the timing between the oscillators. We determined the phase coupling function of the oscillator model, Γ(ϕ), using conductance-based neuron models. Furthermore, we examined the effects of the Fourier zero mode of Γ(ϕ), which has a critical role in the case of spike-time-dependent plasticity-organized recurrent networks. Heterogeneous layered clusters with different frequencies emerged from homogeneous populations as the Fourier zero mode increased. Our findings may provide new insights into the self-assembly mechanisms of neural networks related to synaptic plasticity.

Authors

  • Takaaki Aoki
    Faculty of Education, Kagawa University, Takamatsu, Japan. Electronic address: aoki@ed.kagawa-u.ac.jp.