Appropriate covariance-specification via penalties for penalized splines in mixed models for longitudinal data

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Abstract

A popular approach to smooth models for longitudinal data is to express the model as a mixed model, since this often leads to immediate model fitting with standard procedures. This approach is particularly appealing when truncated polynomials are used as a basis for the smoothing, as the mixed model representation is almost immediate. We show that this approach can lead to a severely biased estimate of the overall population effect and to confidence intervals with undesirable properties. We use penalization to investigate an alternative approach with either B-spline or truncated polynomial bases and show that this new approach does not suffer from the same defects. Our models are defined in terms of B-splines or truncated polynomials with appropriate penalties, but can be expressed as mixed models; this also gives access to fitting with standard procedures. We illustrate our methods with an analysis of two data sets: (a) a balanced data set on Canadian weather and (b) an unbalanced data set on the growth of children. © 2010, Institute of Mathematical Statistics. All rights reserved.

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Djeundje, V. A. B., & Currie, I. D. (2010). Appropriate covariance-specification via penalties for penalized splines in mixed models for longitudinal data. Electronic Journal of Statistics, 4, 1202–1224. https://doi.org/10.1214/10-EJS583

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