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介观神经网络模型中生长的时空分形模式的渗流转变。

Percolation transition at growing spatiotemporal fractal patterns in models of mesoscopic neural networks.

作者信息

Franović Igor, Miljković Vladimir

机构信息

Faculty of Physics, University of Belgrade, P.O. Box 368, 11001 Belgrade, Serbia.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2009 Jun;79(6 Pt 1):061923. doi: 10.1103/PhysRevE.79.061923. Epub 2009 Jun 24.

DOI:10.1103/PhysRevE.79.061923
PMID:19658540
Abstract

Spike packet propagation is modeled in mesoscopic-scale networks, composed of locally and recurrently coupled neural pools, and embedded in a two-dimensional lattice. Site dynamics is governed by three key parameters--pool connectedness probability, synaptic strength (following the steady-state distribution of some realizations of spike-timing-dependent plasticity learning rule), and the neuron refractoriness. Formation of spatiotemporal patterns in our model, synfire chains, exhibits critical behavior, with the emerging percolation phase transition controlled by the probability for nonzero synaptic strength value. Applying the finite-size scaling method, we infer the critical probability dependence on synaptic strength and refractoriness and determine the effects of connection topology on the pertaining percolation clusters fractal dimensions. We find that the directed percolation and the pair contact process with diffusion constitute the relevant universality classes of phase transitions observed in a class of mesoscopic-scale network models, which may be related to recently reported data on in vitro cultures.

摘要

尖峰包传播在介观尺度网络中建模,该网络由局部和循环耦合的神经池组成,并嵌入二维晶格中。位点动力学由三个关键参数控制——池连接概率、突触强度(遵循尖峰时间依赖可塑性学习规则的一些实现的稳态分布)和神经元不应期。我们模型中时空模式即同步发放链的形成表现出临界行为,新兴的渗流相变由非零突触强度值的概率控制。应用有限尺寸标度方法,我们推断出临界概率对突触强度和不应期的依赖性,并确定连接拓扑对相关渗流簇分形维数的影响。我们发现,定向渗流和具有扩散的对接触过程构成了在一类介观尺度网络模型中观察到的相关相变普适类,这可能与最近报道的体外培养数据有关。

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