4.5 Article

Variable Selection for Semiparametric Mixed Models in Longitudinal Studies

期刊

BIOMETRICS
卷 66, 期 1, 页码 79-88

出版社

WILEY
DOI: 10.1111/j.1541-0420.2009.01240.x

关键词

Correlated data; Gaussian stochastic process; Linear mixed models; Smoothly clipped absolute deviation; Smoothing splines

资金

  1. National Institute of Health [R01 CA85848-08, R01 CA085848-08]
  2. National Science Foundation [DMS-0645293]
  3. Division Of Mathematical Sciences
  4. Direct For Mathematical & Physical Scien [1347844] Funding Source: National Science Foundation

向作者/读者索取更多资源

P>We propose a double-penalized likelihood approach for simultaneous model selection and estimation in semiparametric mixed models for longitudinal data. Two types of penalties are jointly imposed on the ordinary log-likelihood: the roughness penalty on the nonparametric baseline function and a nonconcave shrinkage penalty on linear coefficients to achieve model sparsity. Compared to existing estimation equation based approaches, our procedure provides valid inference for data with missing at random, and will be more efficient if the specified model is correct. Another advantage of the new procedure is its easy computation for both regression components and variance parameters. We show that the double-penalized problem can be conveniently reformulated into a linear mixed model framework, so that existing software can be directly used to implement our method. For the purpose of model inference, we derive both frequentist and Bayesian variance estimation for estimated parametric and nonparametric components. Simulation is used to evaluate and compare the performance of our method to the existing ones. We then apply the new method to a real data set from a lactation study.

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