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p.675
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A BiasReduced LogPeriodogram Regression Estimator for the LongMemory Parameter
Donald W. K. Andrews
Patrik Guggenberger
Abstract
In this paper, we propose a simple biasreduced logperiodogram regression estimator, ˆdr, of the longmemory parameter, d, that eliminates the first and higherorder biases of the Geweke and PorterHudak (1983) (GPH) estimator. The biasreduced estimator is the same as the GPH estimator except that one includes frequencies to the power 2k for k=1,…,r, for some positive integer r, as additional regressors in the pseudoregression model that yields the GPH estimator. The reduction in bias is obtained using assumptions on the spectrum only in a neighborhood of the zero frequency. Following the work of Robinson (1995b) and Hurvich, Deo, and Brodsky (1998), we establish the asymptotic bias, variance, and meansquared error (MSE) of ˆdr, determine the asymptotic MSE optimal choice of the number of frequencies, m, to include in the regression, and establish the asymptotic normality of ˆdr. These results show that the bias of ˆdr goes to zero at a faster rate than that of the GPH estimator when the normalized spectrum at zero is sufficiently smooth, but that its variance only is increased by a multiplicative constant. We show that the biasreduced estimator ˆdr attains the optimal rate of convergence for a class of spectral densities that includes those that are smooth of order s≥1 at zero when r≥(s−2)/2 and m is chosen appropriately. For s>2, the GPH estimator does not attain this rate. The proof uses results of Giraitis, Robinson, and Samarov (1997). We specify a datadependent plugin method for selecting the number of frequencies m to minimize asymptotic MSE for a given value of r. Some Monte Carlo simulation results for stationary Gaussian ARFIMA (1, d, 1) and (2, d, 0) models show that the biasreduced estimators perform well relative to the standard logperiodogram regression estimator.
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