Inference for longitudinal data from complex sampling surveys: An approach based on quadratic inference functions |
| |
Authors: | Laura
Dumitrescu,Wei Qian,J. N. K. Rao |
| |
Abstract: | We propose a survey weighted quadratic inference function method for the analysis of data collected from longitudinal surveys, as an alternative to the survey weighted generalized estimating equation method. The procedure yields estimators of model parameters, which are shown to be consistent and have a limiting normal distribution. Furthermore, based on the inference function, a pseudolikelihood ratio type statistic for testing a composite hypothesis on model parameters and a statistic for testing the goodness of fit of the assumed model are proposed. We establish their asymptotic distributions as weighted sums of independent chi‐squared random variables and obtain Rao‐Scott corrections to those statistics leading to a chi‐squared distribution, approximately. We examine the performance of the proposed methods in a simulation study. |
| |
Keywords: | asymptotic normality complex sampling design consistency goodness of fit quadratic inference functions super‐population model |
|
|