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![]() BiometricsVolume 57 Issue 3, Pages 795 - 802 Published Online: 21 May 2004 ©2009 International Biometric Society Journal of the International Biometric Society
Abstract | References | Full Text: PDF (Size: 872K) | Related Articles | Citation Tracking Linear Mixed Models with Flexible Distributions of Random Effects for Longitudinal Data Copyright The International Biometric Society, 2001 KEYWORDS Longitudinal data • Multimodality • Random effects • Seminonparametric density • Semipara-metric mixed effects model • Skewness Summary.
Summary. Normality of random effects is a routine assumption for the linear mixed model, but it may be unrealistic, obscuring important features of among-individual variation. We relax this assumption by approximating the random effects density by the seminonparameteric (SNP) representation of Gallant and Nychka (1987, Econometrics55, 363–390), which includes normality as a special case and provides flexibility in capturing a broad range of nonnormal behavior, controlled by a user-chosen tuning parameter. An advantage is that the marginal likelihood may be expressed in closed form, so inference may be carried out using standard optimization techniques. We demonstrate that standard information criteria may be used to choose the tuning parameter and detect departures from normality, and we illustrate the approach via simulation and using longitudinal data from the Framingham study. Received February 2001. Revised March 2001. Accepted March 2001. |
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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 |
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