Restricted likelihood ratio testing in linear mixed models with general error covariance structure

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Andrea Wiencierz, Sonja Greven, Helmut Küchenhoff

In: The Electronic Journal of Statistics 5 (2011), 1718-1734

Abstract

We consider the problem of testing for zero variance components in linear mixed models with correlated or heteroscedastic errors. In the case of independent and identically distributed errors, a valid test exists, which is based on the exact finite sample distribution of the restricted likelihood ratio test statistic under the null hypothesis. We propose to make use of a transformation to derive the (approximate) null distribution for the restricted likelihood ratio test statistic in the case of a general error covariance structure. The method can also be applied in the case of testing for a random effect in linear mixed models with several random effects by writing the model as one with a single random effect and a more complex covariance structure. The proposed test proves its value in simulations and is finally applied to an interesting question in the field of well-being economics.



Keywords: Linear mixed model, penalized splines, likelihood ratio test, correlated errors, generalized least squares, SOEP data, subjective well-being
Externer Link:
http://projecteuclid.org/DPubS/Repository/1.0/Disseminate?handle=euclid.ejs/1323785606&view=body&content-type=pdfview_1

DOI:
https://doi.org/10.1214/11-EJS654

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