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首页> 外文期刊>Physical review, E >Distinct dynamical behavior in Erd?s-Rényi networks, regular random networks, ring lattices, and all-to-all neuronal networks
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Distinct dynamical behavior in Erd?s-Rényi networks, regular random networks, ring lattices, and all-to-all neuronal networks

机译:ERD中的明显动态行为,常规随机网络,环格和全面神经元网络

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Neuronal network dynamics depends on network structure. In this paper we study how network topology underpins the emergence of different dynamical behaviors in neuronal networks. In particular, we consider neuronal network dynamics on Erd?s-Rényi (ER) networks, regular random (RR) networks, ring lattices, and all-to-all networks. We solve analytically a neuronal network model with stochastic binary-state neurons in all the network topologies, except ring lattices. Given that apart from network structure, all four models are equivalent, this allows us to understand the role of network structure in neuronal network dynamics. While ER and RR networks are characterized by similar phase diagrams, we find strikingly different phase diagrams in the all-to-all network. Neuronal network dynamics is not only different within certain parameter ranges, but it also undergoes different bifurcations (with a richer repertoire of bifurcations in ER and RR compared to all-to-all networks). This suggests that local heterogeneity in the ratio between excitation and inhibition plays a crucial role on emergent dynamics. Furthermore, we also observe one subtle discrepancy between ER and RR networks, namely, ER networks undergo a neuronal activity jump at lower noise levels compared to RR networks, presumably due to the degree heterogeneity in ER networks that is absent in RR networks. Finally, a comparison between network oscillations in RR networks and ring lattices shows the importance of small-world properties in sustaining stable network oscillations.
机译:神经元网络动态取决于网络结构。在本文中,我们研究网络拓扑结构如何构建神经元网络中不同动态行为的出现。特别是,我们考虑在ERD?S-Rényi(ER)网络上的神经网络动态,常规随机(RR)网络,环形格子和全新网络。除了环形格子之外,我们在所有网络拓扑中与随机二元态神经元进行了分析的神经元网络模型。除了网络结构之外,所有四种型号都是等效的,这使我们能够了解网络结构在神经元网络动态中的作用。虽然ER和RR网络的特征在于相似的相图,但我们在全面网络中找到了惊人的不同相位图。神经元网络动态不仅在某些参数范围内的不同,而且它还经历不同的分叉(与ER和RR中的频率较丰富,与全部网络)相比)。这表明激发和抑制之间的局部异质性在突出动力学中起着至关重要的作用。此外,我们还观察到ER和RR网络之间的一个微妙的差异,即与RR网络相比,ER网络经历了较低的噪声水平的神经元活动,可能是由于RR网络中不存在的ER网络中的程度异质性。最后,RR网络和环形格子中的网络振荡之间的比较显示了小世界性质在维持稳定网络振荡方面的重要性。

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