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Statistical mechanics of spike events underlying phase space partitioning and sequence codes in large-scale models of neural circuits

机译:神经电路大规模模型中尖峰事件阶段空间划分和序列码的统计力学

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Cortical circuits operate in an inhibition-dominated regime of spiking activity.Recently,it was found that spiking circuit models in this regime can,despite disordered connectivity and asynchronous irregular activity,exhibit a locally stable dynamics that may be used for neural computation.The lack of existing mathematical tools has precluded analytical insight into this phase.Here we present analytical methods tailored to the granularity of spike-based interactions for analyzing attractor geometry in high-dimensional spiking dynamics.We apply them to reveal the properties of the complex geometry of trajectories of population spiking activity in a canonical model of locally stable spiking dynamics.We find that attractor basin boundaries are the preimages of spike-time collision events involving connected neurons.These spike-based instabilities control the divergence rate of neighboring basins and have no equivalent in rate-based models.They are located according to the disordered connectivity at a random subset of edges in a hypercube representation of the phase space.Iterating backward these edges using the stable dynamics induces a partition refinement on this space that converges to the attractor basins.We formulate a statistical theory of the locations of such events relative to attracting trajectories via a tractable representation of local trajectory ensembles.Averaging over the disorder,we derive the basin diameter distribution,whose characteristic scale emerges from the relative strengths of the stabilizing inhibitory coupling and destabilizing spike interactions.Our study provides an approach to analytically dissect how connectivity,coupling strength,and single-neuron dynamics shape the phase space geometry in the locally stable regime of spiking neural circuit dynamics.
机译:皮质电路在尖刺活动的抑制主导地位中运行。因此,发现该制度的尖峰电路模型尽管连接性和异步的不规则活动无序,但呈现可用于神经计算的局部稳定动态。缺乏现有的数学工具已经排除了分析洞察的本阶段。我们呈现对基于峰值的粒度定制的分析方法,用于分析高维尖刺动力学中的吸引物几何形状。我们应用它们以揭示轨迹复杂几何形状的性质在局部稳定的尖刺动力学规范模型中的人口尖峰活动。我们发现吸引子盆地边界是涉及连接神经元的尖峰时间碰撞事件的序列。基于峰值的稳定性控制了邻近盆地的发散率,并没有等同于基于速率的模型。他们根据无序的康尼在相位空间的超立方体表示中的随机边缘处的CTI积分。使用稳定的动态向后落后这些边缘,在该空间上引起对吸引器盆地的该空间的分区细化。我们制定了这种事件的位置的统计理论通过局部轨迹组合的贸易代表来吸引轨迹。通过紊乱,我们得出了盆地直径分布,其特征尺度从稳定抑制偶联和稳定的尖峰相互作用的相对优势出现。您的研究提供了一种分析解剖方法连接性,耦合强度和单神经元动力学如何在尖峰神经电路动态的局部稳定制度中形成相空间几何形状。

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