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混沌平衡神经网络中的缓慢扩散动力学

Slow diffusive dynamics in a chaotic balanced neural network.

作者信息

Shaham Nimrod, Burak Yoram

机构信息

Racah Institute of Physics, The Hebrew University of Jerusalem, Jerusalem, Israel.

Edmond and Lily Safra Center for Brain Sciences, The Hebrew University of Jerusalem, Jerusalem, Israel.

出版信息

PLoS Comput Biol. 2017 May 1;13(5):e1005505. doi: 10.1371/journal.pcbi.1005505. eCollection 2017 May.

Abstract

It has been proposed that neural noise in the cortex arises from chaotic dynamics in the balanced state: in this model of cortical dynamics, the excitatory and inhibitory inputs to each neuron approximately cancel, and activity is driven by fluctuations of the synaptic inputs around their mean. It remains unclear whether neural networks in the balanced state can perform tasks that are highly sensitive to noise, such as storage of continuous parameters in working memory, while also accounting for the irregular behavior of single neurons. Here we show that continuous parameter working memory can be maintained in the balanced state, in a neural circuit with a simple network architecture. We show analytically that in the limit of an infinite network, the dynamics generated by this architecture are characterized by a continuous set of steady balanced states, allowing for the indefinite storage of a continuous parameter. In finite networks, we show that the chaotic noise drives diffusive motion along the approximate attractor, which gradually degrades the stored memory. We analyze the dynamics and show that the slow diffusive motion induces slowly decaying temporal cross correlations in the activity, which differ substantially from those previously described in the balanced state. We calculate the diffusivity, and show that it is inversely proportional to the system size. For large enough (but realistic) neural population sizes, and with suitable tuning of the network connections, the proposed balanced network can sustain continuous parameter values in memory over time scales larger by several orders of magnitude than the single neuron time scale.

摘要

有人提出,皮层中的神经噪声源于平衡状态下的混沌动力学:在这种皮层动力学模型中,每个神经元的兴奋性和抑制性输入大致相互抵消,活动由突触输入围绕其均值的波动驱动。目前尚不清楚处于平衡状态的神经网络是否能够执行对噪声高度敏感的任务,例如在工作记忆中存储连续参数,同时还能解释单个神经元的不规则行为。在此,我们表明在具有简单网络架构的神经回路中,连续参数工作记忆可以在平衡状态下得以维持。我们通过分析表明,在无限网络的极限情况下,这种架构产生的动力学特征是存在一组连续的稳定平衡状态,从而允许对连续参数进行无限期存储。在有限网络中,我们表明混沌噪声会沿着近似吸引子驱动扩散运动,这会逐渐使存储的记忆退化。我们分析了动力学并表明,缓慢的扩散运动会在活动中诱导出缓慢衰减的时间交叉相关性,这与之前在平衡状态下所描述的情况有很大不同。我们计算了扩散系数,并表明它与系统大小成反比。对于足够大(但现实)的神经群体规模,并且对网络连接进行适当调整,所提出的平衡网络能够在比单个神经元时间尺度大几个数量级的时间尺度上,在记忆中维持连续参数值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5bf2/5432195/bbb54ae4d195/pcbi.1005505.g001.jpg

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