Joint semiparametric mean-covariance model in longitudinal study

Semiparametric regression models and estimating covariance functions are very useful for longitudinal study. To heed the positive-definiteness constraint, we adopt the modified Cholesky decomposition approach to decompose the covariance structure. Then the covariance structure is fitted by a semipar...

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Bibliographic Details
Published inScience China. Mathematics Vol. 54; no. 1; pp. 145 - 164
Main Authors Mao, Jie, Zhu, ZhongYi
Format Journal Article
LanguageEnglish
Published Heidelberg SP Science China Press 01.01.2011
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ISSN1674-7283
1869-1862
DOI10.1007/s11425-010-4078-4

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Summary:Semiparametric regression models and estimating covariance functions are very useful for longitudinal study. To heed the positive-definiteness constraint, we adopt the modified Cholesky decomposition approach to decompose the covariance structure. Then the covariance structure is fitted by a semiparametric model by imposing parametric within-subject correlation while allowing the nonparametric variation function. We estimate regression functions by using the local linear technique and propose generalized estimating equations for the mean and correlation parameter. Kernel estimators are developed for the estimation of the nonparametric variation function. Asymptotic normality of the the resulting estimators is established. Finally, the simulation study and the real data analysis are used to illustrate the proposed approach.
ISSN:1674-7283
1869-1862
DOI:10.1007/s11425-010-4078-4