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Articles

Non parametric regression analysis for longitudinal data with time-depending autoregressive error process

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Pages 4503-4533 | Received 10 Oct 2016, Accepted 05 Sep 2017, Published online: 08 Nov 2017
 

ABSTRACT

This paper considers a non parametric longitudinal model, where the within-subject correlation structure is represented by a time-depending autoregressive error process. An initial estimator without taking into account the within-subject correlation is obtained to fit the time-depending autoregressive error process. With the initial estimator, we construct a two-stage local linear estimator of the mean function. According to the asymptotic normality of the initial and two-stage estimators, it is discovered that the two-stage estimator has a smaller asymptotic variance. The simulation results show us that the two-stage estimation has some good properties. The analysis of a data set demonstrates its application.

MATHEMATICS SUBJECT CLASSIFICATION:

Additional information

Funding

Hang’s research has been supported by SHUFE Graduate Innovation and Creativity Funds [grant number 2014110618].

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