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Correcting Multivariate Auto-Regressive Models for the Influence of Unobserved Common Input

机译:纠正多变量自动回归模型,以实现不可观察的常见输入的影响

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We consider the problem of inferring connectivity from time-series data under the presence of time-dependent common input originating from non-measured variables. We analyze a simple method to filter out the influence of such confounding variables in multivariate auto-regressive models (MVAR). The method learns the parameters of an extended MVAR model with latent variables. Using synthetic MVAR models we characterize where connectivity reconstruction is possible and useful and show that regularization is convenient when the common input has strong influence. We also illustrate how the method can be used to correct partial directed coherence, a causality measure used often in the neuroscience community.
机译:我们考虑在源自非测量变量的时间相关的常见输入的情况下从时序数据推断连接的问题。我们分析了一种简单的方法,以滤除多元自回归模型(MVAR)中这种混杂变量的影响。该方法使用潜在变量来了解扩展MVAR模型的参数。使用合成MVAR型号,我们表征了连接性重建,并且有用并显示规则化在常用输入具有很强的影响时方便。我们还说明了该方法如何用于校正部分定向的一致性,通常在神经科学界中使用的因果措施。

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