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Reconstruction of causal graphs for multivariate processes in the presence of missing data

机译:在缺失数据存在下重建多变量过程的因果图

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Learning temporal causal relationships between time series is an important tool for the identification of causal network structures in linear dynamic systems from measurements. The main objective in network reconstruction is to identify the causal interactions between the variables and determine the connectivity strengths from time-series data. Among several recently introduced data-driven causality measures, partial directed coherence (PDC), directed partial correlation (DPC) and direct power transfer (DPT) have been shown to be effective in both identifying the causal interactions as well as quantifying the strength of connectivity. However, all the existing approaches assume that the observations are available at all time instants and fail to cater to the case of missing observations. This paper presents a method to reconstruct the causal graph from data with missing observations using sparse optimization (SPOPT) techniques. The method is particularly devised for jointly stationary multivariate processes that have vector autoregressive (VAR) structure representations. Demonstrations on different linear causal dynamic systems illustrate the efficacy of the proposed method with respect to the reconstruction of causal networks.
机译:学习时间序列之间的时间因果关系是从测量中识别线性​​动态系统中因果网络结构的重要工具。网络重建的主要目标是识别变量之间的因果关系,并确定从时序数据的连接强度。在几个最近引入的数据驱动的因果区测量中,部分定向的一致性(PDC),指向部分相关性(DPC)和直接电力传输(DPT)在识别因果关系中都有有效,以及量化连接强度。但是,所有现有方法都假定观察结果在所有时间瞬间都有,并且未能迎合缺失观察的情况。本文介绍了一种方法,可以使用稀疏优化(Spopt)技术与缺失观察的数据重建因果图。该方法特别设计用于共同静止的多变量过程,其具有矢量自回归(VAR)结构表示。不同线性因果动态系统的示范说明了所提出的方法关于因果网络重建的效果。

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