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Original Articles

Efficient estimation for time-dynamic longitudinal single-index model

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Pages 3656-3674 | Received 23 Nov 2016, Accepted 26 Jul 2017, Published online: 23 Oct 2017
 

ABSTRACT

We study the efficient estimation procedure of a new single-index model which can reflect the time-dynamic effects for longitudinal covariates. We propose a efficient estimator of the single-index parameter by using a feasible bias-corrected generalized estimating equation. In order to achieve this goal, we use the working independence estimator as an initial estimation, and then a non parametric smoothing technique is used to model the covariance matrix. With appropriate initial estimates of the parametric index, the proposed estimators are shown to be -consistent and asymptotically normally distributed, and the two-stage estimator is shown to be more efficient than the first-stage estimator. We also address the non parametric estimation of regression functions and provide estimates with optimal convergence rates. The finite-sample properties of the estimator are illustrated by some simulation examples, as well as a real data application.

MATHEMATICS SUBJECT CLASSIFICATION:

Additional information

Funding

Liu’s research was supported by grants from the National Natural Science Foundation of China (NSFC) (No. 11701361).

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