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The Arrow of Time in Multivariate Time Series

机译:多变量时间序列的时间箭头

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We prove that a time series satisfying a (linear) multivariate autoregressive moving average (VARMA) model satisfies the same model assumption in the reversed time direction, too, if all innovations are normally distributed. This reversibility breaks down if the innovations are non-Gaussian. This means that under the assumption of a VARMA process with non-Gaussian noise, the arrow of time becomes detectable. Our work thereby provides a theoretic justification of an algorithm that has been used for inferring the direction of video snippets. We present a slightly modified practical algorithm that estimates the time direction for a given sample and prove its consistency. We further investigate how the performance of the algorithm depends on sample size, number of dimensions of the time series and the order of the process. An application to real world data from economics shows that considering multivariate processes instead of univariate processes can be beneficial for estimating the time direction. Our result extends earlier work on univariate time series. It relates to the concept of causal inference, where recent methods exploit non-Gaussianity of the error terms for causal structure learning.
机译:我们证明满足(线性)多变量自动增加移动平均(Varma)模型的时间序列也满足相同的模型假设,如果所有创新都是通常分布式的。如果创新是非高斯的,这种可逆性会破坏。这意味着在假设具有非高斯噪声的Varma过程中,时间箭头可检测到。我们的工作提供了一种用于推断视频片段方向的算法的理论理由。我们提出了一种略微修改的实用算法,估计给定样本的时间方向并证明其一致性。我们进一步研究了算法的性能如何取决于样本大小,时间序列的尺寸数和过程的顺序。来自经济学的现实世界数据的应用表明,考虑多变量流程而不是单变量过程可以有利于估计时间方向。我们的结果在单变量时间序列上延伸了早期的工作。它涉及因果推断的概念,其中最近的方法利用了因果结构学习的错误术语的非高斯。

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