2016
DOI: 10.1016/j.jeconom.2016.04.015
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Testing for Granger causality in large mixed-frequency VARs

Abstract: Reproduction permitted only if source is stated.ISBN 978-3-95729-217-9 (Printversion) Non-technical summary Research QuestionWhen dealing with time series sampled at various frequencies it has become common practice to directly incorporate high-frequency information into the econom(etr)ic model at hand. These specifications were first restricted to the single regression case; with the development of the (stacked) mixed-frequency vector autoregressive (MF-VAR) system (Ghysels, 2015) it is now possible to treat… Show more

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Cited by 42 publications
(38 citation statements)
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“…16 A recent work by Götz and Hecq (2014) attempts to resolve the parameter proliferation issue by using reduced-rank regressions and Bayesian estimation.…”
Section: Simulation Designmentioning
confidence: 99%
“…16 A recent work by Götz and Hecq (2014) attempts to resolve the parameter proliferation issue by using reduced-rank regressions and Bayesian estimation.…”
Section: Simulation Designmentioning
confidence: 99%
“…Granger causality test is closely related to the vector autoregression (VAR) model (Götz, Hecq, & Smeekes, 2016). C. Granger (1969) presented the concept of causality, which states that the existence of X dependence on Y and the knowledge of the values of X and Y can predict the trend of Y. the Granger causality test for time series is based on the assumption that if X affects Y, then X changes should occur before Y changes, but not the other way around.…”
Section: The Methodology Of the Assessment Of Productivity And Its Dementioning
confidence: 99%
“…(vi) Adaptive LASSO: To address the potential inconsistency of the usual LASSO estimator, adapted Lasso (AdaLASSO hereafter) versions have been introduced (see, e.g., Zou, 2006 8 PLS can be interpreted as a middle ground between PCA and canonical correlations analysis (CCA hereafter), where the target variable is usually a vector rather than a single time series (Götz et al, 2016). In CCA, linear combinations on both sides of the equation are determined in such a way as to maximize the covariance between them (again conditional on them being orthogonal to the previous factors).…”
Section: Google Variable Selectionmentioning
confidence: 99%