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Vectorial phase-space analysis for detecting dynamical interactions in firing patterns of biological neural networks

机译:矢量相空间分析,用于检测生物神经网络激发模式中的动力相互作用

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A vectorial statistical phase-space analysis is introduced to detect temporally correlated firing patterns in a network of n neurons. The cross-interval vector is used to establish temporal correlation between firing intervals between neurons. The resultant vectorial sum computed from these individual cross-interval vectors establishes a statistical average measure of the cross correlation among all n neurons. Thus, an n-tuple correlation among all n neurons in the network can be computed. The normalized resultant vectors not only capture an O(n/sup 3/) combinatorial correlation but also reduce the combinatorics to an O(n) vectorial statistic. This vectorial phase-space analysis provides a description of the temporal correlation relationships among different neurons from the trajectories of the cross-interval vectors.
机译:引入矢量统计相空间分析以检测n个神经元网络中时间相关的触发模式。交叉间隔向量用于建立神经元之间触发间隔之间的时间相关性。从这些单独的交叉间隔向量计算出的矢量总和建立了所有n个神经元之间的互相关的统计平均值。因此,可以计算网络中所有n个神经元之间的n元组相关性。归一化的结果向量不仅捕获O(n / sup 3 /)组合相关性,而且将组合运算简化为O(n)矢量统计量。该矢量相空间分析从交叉间隔矢量的轨迹描述了不同神经元之间的时间相关关系。

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