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Temporally Smoothed Wavelet Coherence for Multivariate Point-Processes and Neuron-Firing

机译:多元点过程和神经元激发的临时平滑小波相干

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In neuroscience, it is of key importance to assess how neurons interact with each other as evidenced via their firing patterns and rates. We here introduce a method of smoothing the wavelet periodogram (scalogram) in order to reduce variance in spectral estimates and allow analysis of time-varying dependency between neurons at different scale levels. Previously such smoothing methods have only received analysis in the setting of regular real-valued (Gaussian) time-series. However, in the context of neuron-firing, observations may be modelled as a point-process which when binned, or aggregated, gives rise to an integer-valued time-series. In this paper we propose an analytical asymptotic distribution for the smoothed wavelet spectra, and then contrast this, via synthetic experiments, with the finite sample behaviour of the spectral estimator. We generally find good alignment with the asymptotic distribution, however, this may break down if the level of smoothing, or the scale under analysis is very small. To conclude, we demonstrate how the spectral estimator can be used to characterize real neuron-firing dependency, and how such relationships vary over time and scale.
机译:在神经科学中,至关重要的是评估神经元之间的相互作用方式,这取决于它们的放电方式和速率。我们在这里介绍一种平滑小波周期图(比例图)的方法,以减少频谱估计中的方差,并允许分析不同比例级别的神经元之间的时变依赖性。以前,此类平滑方法仅在常规实值(高斯)时间序列的设置中进行过分析。但是,在神经元触发的情况下,可以将观察建模为点过程,将其合并或聚合后会产生整数值的时间序列。在本文中,我们提出了平滑小波谱的解析渐近分布,然后通过合成实验将其与谱估计器的有限样本行为进行对比。我们通常会找到与渐近分布的良好对齐方式,但是,如果平滑级别或所分析的比例很小,则可能会破坏这种对齐方式。总而言之,我们证明了频谱估计器如何用于表征真实的神经元发射依赖,以及这种关系如何随时间和规模变化。

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