Publication | Closed Access
Covariance structure selection in general mixed models
753
Citations
36
References
1993
Year
Mixture DistributionLatent ModelingCovariance Structure SelectionStatistical ModelingBusinessEconometricsMaximum LikelihoodBiostatisticsStatistical InferenceGeneral Mixed ModelModel ComparisonVariance ModelsPublic HealthMultivariate AnalysisStatisticsFunctional Data Analysis
This article describes a unified approach to variance modeling and inference in the context of a general form of the normal-theory linear mixed model. The primary variance modeling objects are parameterized covari-ance structures, examples being diagonal, compound-symmetry, unstructured, timeseries, and spatial. These structures can enter in two different places in the general mixed model, and the combination of one or both of these places with the variety of structures provides a rich class of variance models. The approach is likelihood-based, and involves the use of both maximum likelihood and restricted maximum likelihood. Two examples provide illustration.
| Year | Citations | |
|---|---|---|
Page 1
Page 1