On the Sensitivity of Granger Causality to Errors-In-Variables, Linear Transformations and Subsampling

Brian D.O. Anderson, Manfred Deistler*, Jean Marie Dufour

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    19 Citations (Scopus)

    Abstract

    This article studies the sensitivity of Granger causality to the addition of noise, the introduction of subsampling, and the application of causal invertible filters to weakly stationary processes. Using canonical spectral factors and Wold decompositions, we give general conditions under which additive noise or filtering distorts Granger-causal properties by inducing (spurious) Granger causality, as well as conditions under which it does not. For the errors-in-variables case, we give a continuity result, which implies that: a ‘small’ noise-to-signal ratio entails ‘small’ distortions in Granger causality. On filtering, we give general necessary and sufficient conditions under which ‘spurious’ causal relations between (vector) time series are not induced by linear transformations of the variables involved. This also yields transformations (or filters) which can eliminate Granger causality from one vector to another one. In a number of cases, we clarify results in the existing literature, with a number of calculations streamlining some existing approaches.

    Original languageEnglish
    Pages (from-to)102-123
    Number of pages22
    JournalJournal of Time Series Analysis
    Volume40
    Issue number1
    DOIs
    Publication statusPublished - Jan 2019

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