Runge J
German Aerospace Center, Institute of Data Science, Jena 07745, Germany.
Chaos. 2018 Jul;28(7):075310. doi: 10.1063/1.5025050.
Causal network reconstruction from time series is an emerging topic in many fields of science. Beyond inferring directionality between two time series, the goal of causal network reconstruction or causal discovery is to distinguish direct from indirect dependencies and common drivers among multiple time series. Here, the problem of inferring causal networks including time lags from multivariate time series is recapitulated from the underlying causal assumptions to practical estimation problems. Each aspect is illustrated with simple examples including unobserved variables, sampling issues, determinism, stationarity, nonlinearity, measurement error, and significance testing. The effects of dynamical noise, autocorrelation, and high dimensionality are highlighted in comparison studies of common causal reconstruction methods. Finally, method performance evaluation approaches and criteria are suggested. The article is intended to briefly review and accessibly illustrate the foundations and practical problems of time series-based causal discovery and stimulate further methodological developments.
从时间序列重建因果网络是许多科学领域中一个新兴的课题。除了推断两个时间序列之间的方向性之外,因果网络重建或因果发现的目标是区分多个时间序列之间的直接依赖和间接依赖以及共同驱动因素。在这里,从潜在的因果假设到实际估计问题,对从多元时间序列推断包含时间滞后的因果网络的问题进行了概述。每个方面都用简单的例子进行说明,包括未观测变量、抽样问题、确定性、平稳性、非线性、测量误差和显著性检验。在常见因果重建方法的比较研究中,突出了动态噪声、自相关和高维性的影响。最后,提出了方法性能评估方法和标准。本文旨在简要回顾并以通俗易懂的方式说明基于时间序列的因果发现的基础和实际问题,并推动进一步的方法学发展。