Author:
Kiefer Nicholas M.,Vogelsang Timothy J.
Abstract
Asymptotic theory for heteroskedasticity autocorrelation
consistent (HAC) covariance matrix estimators requires the
truncation lag, or bandwidth, to increase more slowly than the
sample size. This paper considers an alternative approach covering
the case with the asymptotic covariance matrix estimated by
kernel methods with truncation lag equal to sample size. Although
such estimators are inconsistent, valid tests (asymptotically
pivotal) for regression parameters can be constructed. The limiting
distributions explicitly capture the truncation lag and choice
of kernel. A local asymptotic power analysis shows that the
Bartlett kernel delivers the highest power within a group of
popular kernels. Finite sample simulations suggest that, regardless
of the kernel chosen, the null asymptotic approximation of the
new tests is often more accurate than that for conventional
HAC estimators and asymptotics. Finite sample results on power
show that the new approach is competitive.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
116 articles.
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