Nonparametric Test for Causality with Long-Range Dependence - (Now Published in Econometrica, 68, (2000) Pp.1465-1490.

43 Pages Posted: 21 Jul 2008

See all articles by Javier S. Hidalgo

Javier S. Hidalgo

London School of Economics & Political Science (LSE)

Date Written: April 2000

Abstract

This paper introduces a nonparametric Granger-causality test for covariance stationary linear processes under, possibly, the presence of long-range dependence. We show that the test is consistent and has power against contiguous alternatives converging to the parametric rate T-½. Since the test is based on estimates of the parameters of the representation of a VAR model as a, possibly, two-sided infinite distributed lag model, we first show that a modification of Hannan's (1963, 1967) estimator is root-T consistent and asymptotically normal for the coefficients of such a representation. When the data is long-range dependent this method of estimation becomes more attractive than Least Squares, since the latter can be neither root-T consistent nor asymptotically normal as is the case with short-range dependent data.

JEL Classification: C13, C14

Suggested Citation

Hidalgo, Javier S., Nonparametric Test for Causality with Long-Range Dependence - (Now Published in Econometrica, 68, (2000) Pp.1465-1490. (April 2000). LSE STICERD Research Paper No. EM387, Available at SSRN: https://ssrn.com/abstract=1162580

Javier S. Hidalgo (Contact Author)

London School of Economics & Political Science (LSE) ( email )

Houghton Street
London, WC2A 2AE
United Kingdom

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