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Variable Selection in Linear Mixed Models Using an Extended Class of Penalties
Authors:Julian D Taylor  Arūnas P Verbyla  Colin Cavanagh  Marcus Newberry
Institution:1. Mathematics, Informatics and Statistics and Food Futures National Research Flagship, CSIRO , , Glen Osmond, SA 5064 Australia;2. School of Agriculture, Food and Wine, The University of Adelaide, , Glen Osmond, SA 5064 Australia;3. Plant Industry and Food Futures National Research Flagship, CSIRO, , Canberra, ACT 2601 Australia
Abstract:There is an emerging need to advance linear mixed model technology to include variable selection methods that can simultaneously choose and estimate important effects from a potentially large number of covariates. However, the complex nature of variable selection has made it difficult for it to be incorporated into mixed models. In this paper we extend the well known class of urn:x-wiley:13691473:media:anzs687:anzs687-math-0001 penalties and show that they can be integrated succinctly into a linear mixed model setting. Under mild conditions, the estimator obtained from this mixed model penalised likelihood is shown to be consistent and asymptotically normally distributed. A simulation study reveals that the extended family of penalties achieves varying degrees of estimator shrinkage depending on the value of one of its parameters. The simulation study also shows there is a link between the number of false positives detected and the number of true coefficients when using the same penalty. This new mixed model variable selection (MMVS) technology was applied to a complex wheat quality data set to determine significant quantitative trait loci (QTL).
Keywords:LASSO  linear mixed models  penalised likelihood  variable selection
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