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On strongly connected networks with excitable-refractory dynamics and delayed coupling

机译:在具有兴奋性-难熔动力学和延迟耦合的强连接网络上

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摘要

We consider a directed graph model for the human brain’s neural architecture that is based on small scale, directed, strongly connected sub-graphs (SCGs) of neurons, that are connected together by a sparser mesoscopic network. We assume transmission delays within neuron-to-neuron stimulation, and that individual neurons have an excitable-refractory dynamic, with single firing ‘spikes’ occurring on a much faster time scale than that of the transmission delays. We demonstrate numerically that the SCGs typically have attractors that are equivalent to continual winding maps over relatively low-dimensional tori, thus representing a limit on the range of distinct behaviour. For a discrete formulation, we conduct a large-scale survey of SCGs of varying size, but with the same local structure. We demonstrate that there may be benefits (increased processing capacity and efficiency) in brains having evolved to have a larger number of small irreducible sub-graphs, rather than few, large irreducible sub-graphs. The network of SCGs could be thought of as an architecture that has evolved to create decisions in the light of partial or early incoming information. Hence the applicability of the proposed paradigm to underpinning human cognition.
机译:我们考虑人脑神经体系结构的有向图模型,该模型基于神经元的小规模,有向,强连通子图(SCG),这些子图通过稀疏介观网络连接在一起。我们假设在神经元到神经元刺激内存在传输延迟,并且单个神经元具有兴奋性难治性动力学,单发“尖峰”的发生时间比传输延迟快得多。我们用数字证明,SCG通常具有吸引子,这些吸引子等效于在较低维托里上的连续缠绕图,因此代表了不同行为范围的限制。对于离散公式,我们对大小不同但局部结构相同的SCG进行了大规模调查。我们证明,大脑进化为具有大量小的不可约子图,而不是少数大型不可约子图,可能会有所益处(提高处理能力和效率)。 SCG的网络可以被认为是一种已发展为根据部分或早期传入信息创建决策的体系结构。因此,所提出的范例对于支撑人类认知的适用性。

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