Abstract
We develop an asymptotic theory for the first two sample moments
of a stationary multivariate long memory process under fairly
general conditions. In this theory the convergence rates and
the limits (the fractional Brownian motion, the Rosenblatt process,
etc.) all depend intrinsically on the degree of long memory
in the process. The theory of the sample moments is then applied
to the multiple linear regression model. An interesting finding
is that, even though all the regressors and the disturbance
are stationary and ergodic, the joint long memory in one single
regressor and in the disturbance can invalidate the usual
asymptotic theory for the ordinary least squares (OLS) estimation.
Specifically, the convergence rates of the OLS estimators become
slower, the limits are not normal, and the standard t- and
F-tests all collapse.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
40 articles.
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