Variable selection for longitudinal survey data
Statistics Theory
2021-05-04 v1 Statistics Theory
Abstract
In this article we propose a new variable selection method for analyzing data collected from longitudinal sample surveys. The procedure is based on the survey-weighted quadratic inference function, which was recently introduced as an alternative to the survey-weighted generalized estimating function. Under the joint model-design framework, we introduce the penalized survey-weighted quadratic inference estimator and obtain sufficient conditions for the existence, weak consistency, sparsity and asymptotic normality. To illustrate the finite sample performance of the model selection procedure, we include a limited simulation study.
Cite
@article{arxiv.2105.00504,
title = {Variable selection for longitudinal survey data},
author = {Laura Dumitrescu and Wei Qian and J. N. K. Rao},
journal= {arXiv preprint arXiv:2105.00504},
year = {2021}
}