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Wiley InterScience | ||||||||||||||||||||||
![]() BiometricsVolume 62 Issue 2, Pages 379 - 391 Published Online: 15 Dec 2005 ©2009 International Biometric Society Journal of the International Biometric Society
Abstract | References | Full Text: HTML, PDF (Size: 342K) | Related Articles | Citation Tracking Quadratic Inference Functions for Varying-Coefficient Models with Longitudinal Data Copyright 2005, The International Biometric Society KEYWORDS Generalized method of moments • Goodness of fit • Model selection • Penalized spline • Quadratic inference function • Smoothing spline • Varying-coefficient model ABSTRACTSummary . Nonparametric smoothing methods are used to model longitudinal data, but the challenge remains to incorporate correlation into nonparametric estimation procedures. In this article, we propose an efficient estimation procedure for varying-coefficient models for longitudinal data. The proposed procedure can easily take into account correlation within subjects and deal directly with both continuous and discrete response longitudinal data under the framework of generalized linear models. The proposed approach yields a more efficient estimator than the generalized estimation equation approach when the working correlation is misspecified. For varying-coefficient models, it is often of interest to test whether coefficient functions are time varying or time invariant. We propose a unified and efficient nonparametric hypothesis testing procedure, and further demonstrate that the resulting test statistics have an asymptotic chi-squared distribution. In addition, the goodness-of-fit test is applied to test whether the model assumption is satisfied. The corresponding test is also useful for choosing basis functions and the number of knots for regression spline models in conjunction with the model selection criterion. We evaluate the finite sample performance of the proposed procedures with Monte Carlo simulation studies. The proposed methodology is illustrated by the analysis of an acquired immune deficiency syndrome (AIDS) data set. Received October 2004. Revised July 2005. Accepted August 2005. |
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2009 Harold W. Kuhn Award |
Congratulations to Gerald G. Brown and W. Matthew Carlyle, recipients of the 2009 Harold W. Kuhn Award for their exceptional paper published in Naval Research Logistics "
Optimizing the US Navy's combat logistics force
" Read the full article FREE online PDF [320k] | |
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Teaching Statistics |
Want to share your knowledge with those teaching pupils aged 9 – 19? Do you have a paper of interest to those teaching statistics, mathematics or economics? | |