Introduced more than a half century ago, Granger causality has become a popular tool for analyzing time series data in many application domains, from economics and finance to genomics and neuroscience. Despite this popularity, the validity of this notion for inferring causal relationships among time series has remained the topic of continuous debate. Moreover, while the original definition was general, limitations in computational tools have primarily limited the applications of Granger causality to simple bivariate vector auto-regressive processes or pairwise relationships among a set of variables. Starting with a review of early developments and debates, this paper discusses recent advances that address various shortcomings of the earlier approaches, from models for high-dimensional time series to more recent developments that account for nonlinear and non-Gaussian observations and allow for sub-sampled and mixed frequency time series.
翻译:半个多世纪前引入的 " 引因 " 已成为分析从经济和金融到基因组学和神经科学等许多应用领域的时间序列数据的流行工具,尽管这种受欢迎程度很高,但这一在时间序列之间推断因果关系的概念的有效性仍然是持续辩论的主题。此外,虽然最初的定义是一般性的,但计算工具的局限性主要限制了 " 引因 " 应用到简单的双轨矢量自动回归过程或一系列变量之间的对称关系。从审查早期动态和辩论开始,本文件讨论了最近解决早期方法各种缺点的进展,从高维时间序列模型到考虑非线性和非加苏西观察以及允许次抽样和混合频率时间序列的近期发展。