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Bayes factor between Student t and Gaussian mixed models within an animal breeding context

The implementation of Student t mixed models in animal breeding has been suggested as a useful statistical tool to effectively mute the impact of preferential treatment or other sources of outliers in field data. Nevertheless, these additional sources of variation are undeclared and we do not know w...

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Autores principales: Casellas, Joaquim, Ibáñez-Escriche, Noelia, García-Cortés, Luis Alberto, Varona, Luis
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2674909/
https://www.ncbi.nlm.nih.gov/pubmed/18558073
http://dx.doi.org/10.1186/1297-9686-40-4-395
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author Casellas, Joaquim
Ibáñez-Escriche, Noelia
García-Cortés, Luis Alberto
Varona, Luis
author_facet Casellas, Joaquim
Ibáñez-Escriche, Noelia
García-Cortés, Luis Alberto
Varona, Luis
author_sort Casellas, Joaquim
collection PubMed
description The implementation of Student t mixed models in animal breeding has been suggested as a useful statistical tool to effectively mute the impact of preferential treatment or other sources of outliers in field data. Nevertheless, these additional sources of variation are undeclared and we do not know whether a Student t mixed model is required or if a standard, and less parameterized, Gaussian mixed model would be sufficient to serve the intended purpose. Within this context, our aim was to develop the Bayes factor between two nested models that only differed in a bounded variable in order to easily compare a Student t and a Gaussian mixed model. It is important to highlight that the Student t density converges to a Gaussian process when degrees of freedom tend to infinity. The twomodels can then be viewed as nested models that differ in terms of degrees of freedom. The Bayes factor can be easily calculated from the output of a Markov chain Monte Carlo sampling of the complex model (Student t mixed model). The performance of this Bayes factor was tested under simulation and on a real dataset, using the deviation information criterion (DIC) as the standard reference criterion. The two statistical tools showed similar trends along the parameter space, although the Bayes factor appeared to be the more conservative. There was considerable evidence favoring the Student t mixed model for data sets simulated under Student t processes with limited degrees of freedom, and moderate advantages associated with using the Gaussian mixed model when working with datasets simulated with 50 or more degrees of freedom. For the analysis of real data (weight of Pietrain pigs at six months), both the Bayes factor and DIC slightly favored the Student t mixed model, with there being a reduced incidence of outlier individuals in this population.
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spelling pubmed-26749092009-04-30 Bayes factor between Student t and Gaussian mixed models within an animal breeding context Casellas, Joaquim Ibáñez-Escriche, Noelia García-Cortés, Luis Alberto Varona, Luis Genet Sel Evol Research The implementation of Student t mixed models in animal breeding has been suggested as a useful statistical tool to effectively mute the impact of preferential treatment or other sources of outliers in field data. Nevertheless, these additional sources of variation are undeclared and we do not know whether a Student t mixed model is required or if a standard, and less parameterized, Gaussian mixed model would be sufficient to serve the intended purpose. Within this context, our aim was to develop the Bayes factor between two nested models that only differed in a bounded variable in order to easily compare a Student t and a Gaussian mixed model. It is important to highlight that the Student t density converges to a Gaussian process when degrees of freedom tend to infinity. The twomodels can then be viewed as nested models that differ in terms of degrees of freedom. The Bayes factor can be easily calculated from the output of a Markov chain Monte Carlo sampling of the complex model (Student t mixed model). The performance of this Bayes factor was tested under simulation and on a real dataset, using the deviation information criterion (DIC) as the standard reference criterion. The two statistical tools showed similar trends along the parameter space, although the Bayes factor appeared to be the more conservative. There was considerable evidence favoring the Student t mixed model for data sets simulated under Student t processes with limited degrees of freedom, and moderate advantages associated with using the Gaussian mixed model when working with datasets simulated with 50 or more degrees of freedom. For the analysis of real data (weight of Pietrain pigs at six months), both the Bayes factor and DIC slightly favored the Student t mixed model, with there being a reduced incidence of outlier individuals in this population. BioMed Central 2008-07-15 /pmc/articles/PMC2674909/ /pubmed/18558073 http://dx.doi.org/10.1186/1297-9686-40-4-395 Text en Copyright © 2008 INRA, EDP Sciences
spellingShingle Research
Casellas, Joaquim
Ibáñez-Escriche, Noelia
García-Cortés, Luis Alberto
Varona, Luis
Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title_full Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title_fullStr Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title_full_unstemmed Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title_short Bayes factor between Student t and Gaussian mixed models within an animal breeding context
title_sort bayes factor between student t and gaussian mixed models within an animal breeding context
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2674909/
https://www.ncbi.nlm.nih.gov/pubmed/18558073
http://dx.doi.org/10.1186/1297-9686-40-4-395
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