Abstract
In this paper, we study the bias-corrected test
developed in Fan (1994). It is based on the integrated
squared difference between a kernel estimator of the unknown
density function of a random vector and a kernel smoothed
estimator of the parametric density function to be tested
under the null hypothesis. We provide an alternative asymptotic
approximation of the finite-sample distribution of this
test by fixing the smoothing parameter. In contrast to
the normal approximation obtained in Fan (1994) in which
the smoothing parameter shrinks to zero as the sample size
grows to infinity, we obtain a non-normal asymptotic distribution
for the bias-corrected test. A parametric bootstrap procedure
is proposed to approximate the critical values of this
test. We show both analytically and by simulation that
the proposed bootstrap procedure works. Consistency and
local power properties of the bias-corrected test with
a fixed smoothing parameter are also discussed.
Publisher
Cambridge University Press (CUP)
Subject
Economics and Econometrics,Social Sciences (miscellaneous)
Cited by
50 articles.
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