自回归模型
推论
因果推理
系列(地层学)
鉴定(生物学)
时间序列
计算机科学
向量自回归
基质(化学分析)
数学
算法
人工智能
过程(计算)
噪音(视频)
计量经济学
机器学习
图像(数学)
操作系统
古生物学
生物
植物
复合材料
材料科学
作者
Philipp Geiger,Kun Zhang,Bernhard Schoelkopf,Maoguo Gong,Dominik Janzing
摘要
A widely applied approach to causal inference from a time series X, often referred to as (linear) Granger causal analysis, is to simply regress present on past and interpret the regression matrix B causally. However, if there is an unmeasured time series Z that influences X, then this approach can lead to wrong causal conclusions, i.e., distinct from those one would draw if one had additional information such as Z. In this paper we take a different approach: We assume that X together with some hidden Z forms a first order vector autoregressive (VAR) process with transition matrix A, and argue why it is more valid to interpret A causally instead of B. Then we examine under which conditions the most important parts of A are identifiable or almost identifiable from only X. Essentially, sufficient conditions are (1) non-Gaussian, independent noise or (2) no influence from X to Z. We present two estimation algorithms that are tailored towards conditions (1) and (2), respectively, and evaluate them on synthetic and real-world data. We discuss how to check the model using X.
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