Jackknifing in partially linear regression models with serially correlated errors |
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Authors: | Jinhong You Xian Zhou Gemai Chen |
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Affiliation: | a Department of Applied Mathematics, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong, PR China;b Department of Mathematics & Statistics, University of Calgary, Calgary, Alberta, T2N 1N4, Canada |
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Abstract: | In this paper jackknifing technique is examined for functions of the parametric component in a partially linear regression model with serially correlated errors. By deleting partial residuals a jackknife-type estimator is proposed. It is shown that the jackknife-type estimator and the usual semiparametric least-squares estimator (SLSE) are asymptotically equivalent. However, simulation shows that the former has smaller biases than the latter when the sample size is small or moderate. Moreover, since the errors are correlated, both the Tukey type and the delta type jackknife asymptotic variance estimators are not consistent. By introducing cross-product terms, a consistent estimator of the jackknife asymptotic variance is constructed and shown to be robust against heterogeneity of the error variances. In addition, simulation results show that confidence interval estimation based on the proposed jackknife estimator has better coverage probability than that based on the SLSE, even though the latter uses the information of the error structure, while the former does not. |
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Keywords: | Partially linear regression model Serially correlated errors Semiparametric least-squares estimator Jackknife-type estimation Asymptotic normality Consistency Robustness |
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