论文标题

从连续信号和点过程之间的单变量到多变量耦合:数学框架

From univariate to multivariate coupling between continuous signals and point processes: a mathematical framework

论文作者

Safavi, Shervin, Logothetis, Nikos K., Besserve, Michel

论文摘要

时间序列数据集通常包含异质信号,由不断变化的数量和离散发生的事件组成。这些测量结果之间的耦合可能会提供对正在研究系统的关键基础机制的见解。为了更好地提取这些信息,我们研究了连续信号和点过程之间耦合度量的渐近统计特性。我们首先将Martingale随机整合理论作为一个数学模型,用于包括相位锁定值的统计量家族,这是一种经典的耦合度量,以表征复杂的动力学。基于Martingale Central限制定理,我们可以得出可以利用用于统计测试的这种耦合度量估计值的渐近高斯分布。其次,基于该结果的多元扩展和随机矩阵理论,我们建立了一种原则性的方法来分析大量点过程和连续信号之间的低等级耦合。对于无耦合的零假设,我们为矩阵的平方奇异值的经验分布建立了足够的条件,以收敛,随着测得的信号的数量增加,对众所周知的Marchenko-Pastur(MP)定律,以及最大的平方单数值收敛到MPS支持的上端。这证明了一种简单的阈值方法来评估多元耦合的重要性。最后,我们用仿真说明了我们的单变量和多变量结果在神经时间序列中的相关性,从而解决了如何可靠地量化多通道局部域电位信号与大量神经元的尖峰活动之间的相互作用。

Time series datasets often contain heterogeneous signals, composed of both continuously changing quantities and discretely occurring events. The coupling between these measurements may provide insights into key underlying mechanisms of the systems under study. To better extract this information, we investigate the asymptotic statistical properties of coupling measures between continuous signals and point processes. We first introduce martingale stochastic integration theory as a mathematical model for a family of statistical quantities that include the Phase Locking Value, a classical coupling measure to characterize complex dynamics. Based on the martingale Central Limit Theorem, we can then derive the asymptotic Gaussian distribution of estimates of such coupling measure, that can be exploited for statistical testing. Second, based on multivariate extensions of this result and Random Matrix Theory, we establish a principled way to analyze the low rank coupling between a large number of point processes and continuous signals. For a null hypothesis of no coupling, we establish sufficient conditions for the empirical distribution of squared singular values of the matrix to converge, as the number of measured signals increases, to the well-known Marchenko-Pastur (MP) law, and the largest squared singular value converges to the upper end of the MPs support. This justifies a simple thresholding approach to assess the significance of multivariate coupling. Finally, we illustrate with simulations the relevance of our univariate and multivariate results in the context of neural time series, addressing how to reliably quantify the interplay between multi channel Local Field Potential signals and the spiking activity of a large population of neurons.

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