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神经网络中波动效应的场论方法。

Field-theoretic approach to fluctuation effects in neural networks.

作者信息

Buice Michael A, Cowan Jack D

机构信息

NIH/NIDDK/LBM, Building 12A Room 4007, MSC 5621, Bethesda, MD 20892, USA.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2007 May;75(5 Pt 1):051919. doi: 10.1103/PhysRevE.75.051919. Epub 2007 May 29.

DOI:10.1103/PhysRevE.75.051919
PMID:17677110
Abstract

A well-defined stochastic theory for neural activity, which permits the calculation of arbitrary statistical moments and equations governing them, is a potentially valuable tool for theoretical neuroscience. We produce such a theory by analyzing the dynamics of neural activity using field theoretic methods for nonequilibrium statistical processes. Assuming that neural network activity is Markovian, we construct the effective spike model, which describes both neural fluctuations and response. This analysis leads to a systematic expansion of corrections to mean field theory, which for the effective spike model is a simple version of the Wilson-Cowan equation. We argue that neural activity governed by this model exhibits a dynamical phase transition which is in the universality class of directed percolation. More general models (which may incorporate refractoriness) can exhibit other universality classes, such as dynamic isotropic percolation. Because of the extremely high connectivity in typical networks, it is expected that higher-order terms in the systematic expansion are small for experimentally accessible measurements, and thus, consistent with measurements in neocortical slice preparations, we expect mean field exponents for the transition. We provide a quantitative criterion for the relative magnitude of each term in the systematic expansion, analogous to the Ginsburg criterion. Experimental identification of dynamic universality classes in vivo is an outstanding and important question for neuroscience.

摘要

一个定义明确的神经活动随机理论,它允许计算任意统计矩以及支配它们的方程,对于理论神经科学来说是一个潜在的有价值工具。我们通过使用非平衡统计过程的场论方法分析神经活动的动力学来产生这样一个理论。假设神经网络活动是马尔可夫的,我们构建了有效脉冲模型,该模型描述了神经波动和响应。这种分析导致了对平均场理论修正的系统展开,对于有效脉冲模型而言,平均场理论是威尔逊 - 考恩方程的一个简单版本。我们认为由该模型支配的神经活动表现出一种动力学相变,它属于定向渗流的普适类。更一般的模型(可能包含不应期)可以表现出其他普适类,如动态各向同性渗流。由于典型网络中极高的连通性,预计在系统展开中的高阶项对于实验可及的测量来说很小,因此,与新皮质切片制备中的测量结果一致,我们预期该转变的平均场指数。我们提供了一个类似于金斯堡判据的关于系统展开中每一项相对大小的定量判据。在体内对动态普适类进行实验识别是神经科学中一个突出且重要的问题。

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