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A Statistical Framework to Infer Delay and Direction of Information Flow from Measurements of Complex Systems

机译:从复杂系统的测量中推断信息流的延迟和方向的统计框架

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摘要

In neuroscience, data are typically generated from neural network activity. The resulting time series represent measurements from spatially distributed subsystems with complex interactions, weakly coupled to a high-dimensional global system. We present a statistical framework to estimate the direction of information flow and its delay in measurements from systems of this type. Informed by differential topology, gaussian process regression is employed to reconstruct measurements of putative driving systems from measurements of the driven systems. These reconstructions serve to estimate the delay of the interaction by means of an analytical criterion developed for this purpose. The model accounts for a range of possible sources of uncertainty, including temporally evolving intrinsic noise, while assuming complex nonlinear dependencies. Furthermore, we show that if information flow is delayed, this approach also allows for inference in strong coupling scenarios of systems exhibiting synchronization phenomena. The validity of the method is demonstrated with a variety of delay-coupled chaotic oscillators. In addition, we show that these results seamlessly transfer to local field potentials in cat visual cortex.
机译:在神经科学中,数据通常是由神经网络活动生成的。所得的时间序列表示来自空间分布的子系统的测量结果,这些子系统具有复杂的交互作用,弱耦合到高维全局系统。我们提出了一个统计框架来估算信息流的方向及其在此类系统的测量中的延迟。在差分拓扑的通知下,采用高斯过程回归从被驱动系统的测量值重建假定驱动系统的测量值。这些重建用于通过为此目的开发的分析标准来估计交互的延迟。该模型考虑了一系列可能的不确定性来源,包括随时间演变的固有噪声,同时假设了复杂的非线性相关性。此外,我们表明,如果信息流被延迟,则该方法还可以在出现同步现象的系统的强耦合场景中进行推断。各种延迟耦合混沌振荡器证明了该方法的有效性。此外,我们证明了这些结果可无缝转移到猫视皮层中的局部场电位。

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