Granger Causality Testing in High-Dimensional VARs: A Post-Double-Selection Procedure

A. Hecq, L. Margaritella*, S. Smeekes

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

We develop an LM test for Granger causality in high-dimensional (HD) vector autoregressive (VAR) models based on penalized least squares estimations. To obtain a test retaining the appropriate size after the variable selection done by the lasso, we propose a post-double-selection procedure to partial out effects of nuisance variables and establish its uniform asymptotic validity. We conduct an extensive set of Monte-Carlo simulations that show our tests perform well under different data generating processes, even without sparsity. We apply our testing procedure to find networks of volatility spillovers and we find evidence that causal relationships become clearer in HD compared to standard low-dimensional VARs.
Original languageEnglish
Article numbernbab023
Pages (from-to)915-958
Number of pages44
JournalJournal of Financial Econometrics
Volume21
Issue number3
Early online dateNov 2021
DOIs
Publication statusPublished - 2023

Keywords

  • Granger causality
  • high-dimensional inference
  • post-double-selection
  • vector autoregressive models
  • MODEL SELECTION
  • REGULARIZED ESTIMATION
  • CONFIDENCE-INTERVALS
  • ADAPTIVE LASSO
  • INFERENCE
  • BOOTSTRAP
  • SHRINKAGE
  • FREQUENCY
  • RISK

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