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Effect of network architecture on burst and spike synchronization in a scale-free network of bursting neurons

机译:网络架构对突发神经元无标度网络中突发和尖峰同步的影​​响

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We investigate the effect of network architecture on burst and spike synchronization in a directed scale-free network (SFN) of bursting neurons, evolved via two independent alpha- and beta-processes. The alpha-process corresponds to a directed version of the Barabasi-Albert SFN model with growth and preferential attachment, while for the beta-process only preferential attachments between pre-existing nodes are made without addition of new nodes. We first consider the "pure'' alpha-process of symmetric preferential attachment (with the same in- and out-degrees), and study emergence of burst and spike synchronization by varying the coupling strength J and the noise intensity D for a fixed attachment degree. Characterizations of burst and spike synchronization are also made by employing realistic order parameters and statistical-mechanical measures. Next, we choose appropriate values of J and D where only burst synchronization occurs, and investigate the effect of the scale-free connectivity on the burst synchronization by varying (1) the symmetric attachment degree and (2) the asymmetry parameter (representing deviation from the symmetric case) in the alpha-process, and (3) the occurrence probability of the beta-process. In all these three cases, changes in the type and the degree of population synchronization are studied in connection with the network topology such as the degree distribution, the average path length L-p, and the betweenness centralization B-c. It is thus found that just taking into consideration L-p and B-c (affecting global communication between nodes) is not sufficient to understand emergence of population synchronization in SFNs, but in addition to them, the in-degree distribution (affecting individual dynamics) must also be considered to fully understand for the effective population synchronization. (C) 2016 Elsevier Ltd. All rights reserved.
机译:我们调查网络体系结构对突发和尖峰同步的影​​响,该突发和尖峰同步是通过两个独立的alpha和beta进程演变而来的突发神经元定向无标度网络(SFN)。 alpha过程对应于具有增长和优先连接的Barabasi-Albert SFN模型的有向版本,而对于beta过程,仅在不存在新节点的情况下在现有节点之间进行优先连接。我们首先考虑对称优先附着的“纯”阿尔法过程(具有相同的进出度),并通过改变固定附着的耦合强度J和噪声强度D来研究突发和尖峰同步的出现还通过采用实际的阶次参数和统计机械措施来表征突发和尖峰同步,然后,在仅发生突发同步的情况下,选择合适的J和D值,并研究无标度连接对信号的影响。在这三种情况下,通过改变(1)对称附着度和(2)不对称参数(代表与对称情况的偏差)以及(3)β进程的发生概率来实现突发同步。 ,结合网络拓扑研究人口同步类型和程度的变化,例如程度分布,平均路径长度Lp和th中间集权B-c。因此,发现仅考虑Lp和Bc(影响节点之间的全局通信)不足以理解SFN中人口同步的出现,但是除了它们之外,度内分布(影响个人动态)也必须是考虑充分了解有效的人口同步。 (C)2016 Elsevier Ltd.保留所有权利。

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