Open Journal of Statistics

Volume 11, Issue 4 (August 2021)

ISSN Print: 2161-718X   ISSN Online: 2161-7198

Google-based Impact Factor: 0.53  Citations  

Nonparametric Estimation in Linear Mixed Models with Uncorrelated Homoscedastic Errors

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DOI: 10.4236/ojs.2021.114035    299 Downloads   1,977 Views  Citations

ABSTRACT

Today, Linear Mixed Models (LMMs) are fitted, mostly, by assuming that random effects and errors have Gaussian distributions, therefore using Maximum Likelihood (ML) or REML estimation. However, for many data sets, that double assumption is unlikely to hold, particularly for the random effects, a crucial component in which assessment of magnitude is key in such modeling. Alternative fitting methods not relying on that assumption (as ANOVA ones and Raos MINQUE) apply, quite often, only to the very constrained class of variance components models. In this paper, a new computationally feasible estimation methodology is designed, first for the widely used class of 2-level (or longitudinal) LMMs with only assumption (beyond the usual basic ones) that residual errors are uncorrelated and homoscedastic, with no distributional assumption imposed on the random effects. A major asset of this new approach is that it yields nonnegative variance estimates and covariance matrices estimates which are symmetric and, at least, positive semi-definite. Furthermore, it is shown that when the LMM is, indeed, Gaussian, this new methodology differs from ML just through a slight variation in the denominator of the residual variance estimate. The new methodology actually generalizes to LMMs a well known nonparametric fitting procedure for standard Linear Models. Finally, the methodology is also extended to ANOVA LMMs, generalizing an old method by Henderson for ML estimation in such models under normality.

Share and Cite:

Ndong Nguéma, E.-P., Fesuh Nono, B. and Gwét, H. (2021) Nonparametric Estimation in Linear Mixed Models with Uncorrelated Homoscedastic Errors. Open Journal of Statistics, 11, 558-605. https://doi.org/10.4236/ojs.2021.114035

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