Title of article :
Analysis of growth curve data by using cubic smoothing splines
Author/Authors :
Tapio Nummi & Laura Koskela، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
Longitudinal data frequently arises in various fields of applied sciences where individuals are measured
according to some ordered variable, e.g. time. A common approach used to model such data is based on
the mixed models for repeated measures. This model provides an eminently flexible approach to modeling
of a wide range of mean and covariance structures. However, such models are forced into a rigidly defined
class of mathematical formulas which may not be well supported by the data within the whole sequence of
observations. A possible non-parametric alternative is a cubic smoothing spline, which is highly flexible
and has useful smoothing properties. It can be shown that under normality assumption, the solution of the
penalized log-likelihood equation is the cubic smoothing spline, and this solution can be further expressed
as a solution of the linear mixed model. It is shown here how cubic smoothing splines can be easily used
in the analysis of complete and balanced data. Analysis can be greatly simplified by using the unweighted
estimator studied in the paper. It is shown that if the covariance structure of random errors belong to
certain class of matrices, the unweighted estimator is the solution to the penalized log-likelihood function.
This result is new in smoothing spline context and it is not only confined to growth curve settings. The
connection to mixed models is used in developing a rough testing of group profiles. Numerical examples
are presented to illustrate the techniques proposed.
Keywords :
covariance structures , mixed models , Penalizedlog-likelihood , Longitudinal data , maximum likelihood
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS