2021
DOI: 10.48550/arxiv.2103.15095
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Inference of Random Effects for Linear Mixed-Effects Models with a Fixed Number of Clusters

Abstract: We consider a linear mixed-effects model with a clustered structure, where the parameters are estimated using maximum likelihood (ML) based on possibly unbalanced data. Inference with this model is typically done based on asymptotic theory, assuming that the number of clusters tends to infinity with the sample size. However, when the number of clusters is fixed, classical asymptotic theory developed under a divergent number of clusters is no longer valid and can lead to erroneous conclusions. In this paper, we… Show more

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