Edgeworth Expansion for Linear Regression Processes with Long-Memory Errors |
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Authors: | Mosisa Aga |
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Affiliation: | 1. Department of Mathematics , Auburn University at Montgomery , Montgomery , Alabama , USA maga@aum.edu |
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Abstract: | This article provides an Edgeworth expansion for the distribution of the log-likelihood derivative LLD of the parameter of a time series generated by a linear regression model with Gaussian, stationary, and long-memory errors. Under some sets of conditions on the regression coefficients, the spectral density function, and the parameter values, an Edgeworth expansion of the density as well as the distribution function of a vector of centered and normalized derivatives of the plug-in log-likelihood PLL function of arbitrarily large order is established. This is done by extending the results of Lieberman et al. (2003 Lieberman , O. , Rousseau , J. , Zucker , D. M. ( 2003 ). Valid edgeworth expansions for the maximum likelihood estimator of the parameter of a stationary. gaussian, strongly dependent processes. it Ann. Statist. 31:586–612 . [Google Scholar]), who provided an Edgeworth expansion for the Gaussian stationary long-memory case, to our present model, which is a linear regression process with stationary Gaussian long-memory errors. |
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Keywords: | Edgeworth expansion Gaussian process Linear regression model Long memory process Maximum likelihood estimator Plug-in likelihood function Spectral density function |
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