A formalism for evaluating analytically the cross-correlation structure of a firing-rate network model.

IF 2.3 4区 医学 Q1 Neuroscience
Journal of Mathematical Neuroscience Pub Date : 2015-03-15 eCollection Date: 2015-01-01 DOI:10.1186/s13408-015-0020-y
Diego Fasoli, Olivier Faugeras, Stefano Panzeri
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引用次数: 12

Abstract

We introduce a new formalism for evaluating analytically the cross-correlation structure of a finite-size firing-rate network with recurrent connections. The analysis performs a first-order perturbative expansion of neural activity equations that include three different sources of randomness: the background noise of the membrane potentials, their initial conditions, and the distribution of the recurrent synaptic weights. This allows the analytical quantification of the relationship between anatomical and functional connectivity, i.e. of how the synaptic connections determine the statistical dependencies at any order among different neurons. The technique we develop is general, but for simplicity and clarity we demonstrate its efficacy by applying it to the case of synaptic connections described by regular graphs. The analytical equations so obtained reveal previously unknown behaviors of recurrent firing-rate networks, especially on how correlations are modified by the external input, by the finite size of the network, by the density of the anatomical connections and by correlation in sources of randomness. In particular, we show that a strong input can make the neurons almost independent, suggesting that functional connectivity does not depend only on the static anatomical connectivity, but also on the external inputs. Moreover we prove that in general it is not possible to find a mean-field description à la Sznitman of the network, if the anatomical connections are too sparse or our three sources of variability are correlated. To conclude, we show a very counterintuitive phenomenon, which we call stochastic synchronization, through which neurons become almost perfectly correlated even if the sources of randomness are independent. Due to its ability to quantify how activity of individual neurons and the correlation among them depends upon external inputs, the formalism introduced here can serve as a basis for exploring analytically the computational capability of population codes expressed by recurrent neural networks.

Abstract Image

Abstract Image

Abstract Image

射击率网络模型相互关联结构的一种分析评价形式。
我们引入了一种新的形式来解析评价具有循环连接的有限大小发射速率网络的相互关联结构。该分析对神经活动方程进行了一阶扰动展开,其中包括三个不同的随机性来源:膜电位的背景噪声、它们的初始条件和循环突触权重的分布。这允许分析量化解剖和功能连接之间的关系,即突触连接如何决定不同神经元之间任意顺序的统计依赖性。我们开发的技术是通用的,但为了简单明了,我们通过将其应用于正则图描述的突触连接的情况来证明其有效性。由此获得的解析方程揭示了循环发射速率网络以前未知的行为,特别是在相关性如何被外部输入、网络的有限大小、解剖连接的密度和随机性来源的相关性所修改。特别是,我们发现强输入可以使神经元几乎独立,这表明功能连接不仅取决于静态解剖连接,还取决于外部输入。此外,我们证明,如果解剖连接过于稀疏或我们的三个变异性源相互关联,通常不可能找到网络的平均场描述(la Sznitman)。总之,我们展示了一种非常违反直觉的现象,我们称之为随机同步,通过这种现象,即使随机性的来源是独立的,神经元也几乎完全相关。由于它能够量化单个神经元的活动以及它们之间的相关性如何依赖于外部输入,因此这里引入的形式化可以作为分析探索递归神经网络表达的种群代码计算能力的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Mathematical Neuroscience
Journal of Mathematical Neuroscience Neuroscience-Neuroscience (miscellaneous)
自引率
0.00%
发文量
0
审稿时长
13 weeks
期刊介绍: The Journal of Mathematical Neuroscience (JMN) publishes research articles on the mathematical modeling and analysis of all areas of neuroscience, i.e., the study of the nervous system and its dysfunctions. The focus is on using mathematics as the primary tool for elucidating the fundamental mechanisms responsible for experimentally observed behaviours in neuroscience at all relevant scales, from the molecular world to that of cognition. The aim is to publish work that uses advanced mathematical techniques to illuminate these questions. It publishes full length original papers, rapid communications and review articles. Papers that combine theoretical results supported by convincing numerical experiments are especially encouraged. Papers that introduce and help develop those new pieces of mathematical theory which are likely to be relevant to future studies of the nervous system in general and the human brain in particular are also welcome.
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