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Consistent HAC Estimation and Robust Regression Testing Using Sharp Origin Kernels with No Truncation
Peter C.B. Phillips, Yale University
Yixiao Sun, University of California, San Diego
Sainan Jin, Yale University
ABSTRACT: Sharp origin kernels, constructed by taking powers of the Bartlett kernel,
are suggested for use in heteroskedasticity and autocorrelation consistent
(HAC) estimation with no truncation (or bandwidth) parameter. When the
power parameter (rho) is fixed, analysis and simulations indicate that
sharp origin kernels lead to tests with improved size properties relative
to conventional tests and better power properties than other tests using
Bartlett and other conventional kernels without truncation. When the power
parameter is passed to infinity with the sample size (T), the new kernels
provide consistent HAC estimates. A data-driven method for selecting the
power parameter is recommended for hypothesis testing. A new test procedure
that combines the good elements of fixed rho and large rho asymptotics is
suggested. Simulations show that the new test is less size-distorted than
the conventional HAC t-test at the cost of a very small power loss.
SUGGESTED CITATION: Peter C.B. Phillips, Yixiao Sun, and Sainan Jin,
"Consistent HAC Estimation and Robust Regression Testing Using Sharp Origin Kernels with No Truncation"
(September 28, 2004).
Department of Economics, UCSD.
Paper 2003-05.
http://repositories.cdlib.org/ucsdecon/2003-05
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