Signals (Jun 2021)

Dynamic Functional Principal Components for Testing Causality

  • Matthieu Saumard,
  • Bilal Hadjadji

DOI
https://doi.org/10.3390/signals2020022
Journal volume & issue
Vol. 2, no. 2
pp. 353 – 365

Abstract

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In this paper, we investigate the causality in the sense of Granger for functional time series. The concept of causality for functional time series is defined, and a statistical procedure of testing the hypothesis of non-causality is proposed. The procedure is based on projections on dynamic functional principal components and the use of a multivariate Granger test. A comparative study with existing procedures shows the good results of our test. An illustration on a real dataset is provided to attest the performance of the proposed procedure.

Keywords