JOURNAL ARTICLE

Checking identifiability of covariance parameters in linear mixed effects models

Abstract

To build a linear mixed effects model, one needs to specify the random effects and often the associated parametrized covariance matrix structure. Inappropriate specification of the structures can result in the covariance parameters of the model not identifiable. Non-identifiability can result in extraordinary wide confidence intervals, and unreliable parameter inference. Sometimes software produces implication of model non-identifiability, but not always. In the simulation of fitting non-identifiable models we tried, about half of the times the software output did not look abnormal. We derive necessary and sufficient conditions of covariance parameters identifiability which does not require any prior model fitting. The results are easy to implement and are applicable to commonly used covariance matrix structures.

Keywords:
Identifiability Covariance Covariance matrix Covariance function Linear model Estimation of covariance matrices Covariance intersection Law of total covariance

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Topics

Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Psychometric Methodologies and Testing
Social Sciences →  Decision Sciences →  Management Science and Operations Research
Statistical Methods in Clinical Trials
Physical Sciences →  Mathematics →  Statistics and Probability

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