Title of article
Edgeworth expansions for semiparametric Whittle estimation of long memory
Author/Authors
Giraitis، L. نويسنده , , Robinson، P.M. نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2003
Pages
-1324
From page
1325
To page
0
Abstract
The semiparametric local Whittle or Gaussian estimate of the long memory parameter is known to have especially nice limiting distributional properties, being asymptotically normal with a limiting variance that is completely known. However in moderate samples the normal approximation may not be very good, so we consider a refined, Edgeworth, approximation, for both a tapered estimate and the original untapered one. For the tapered estimate, our higher-order correction involves two terms, one of order m^-1/2 (where m is the bandwidth number in the estimation), the other a bias term, which increases in m; depending on the relative magnitude of the terms, one or the other may dominate, or they may balance. For the untapered estimate we obtain an expansion in which, for m increasing fast enough, the correction consists only of a bias term. We discuss applications of our expansions to improved statistical inference and bandwidth choice. We assume Gaussianity, but in other respects our assumptions seem mild.
Keywords
Stochastic approximation , Stochastic optimization , gradient estimation , Randomization , optimal rates of convergence , Asymptotic normality
Journal title
Annals of Statistics
Serial Year
2003
Journal title
Annals of Statistics
Record number
74493
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