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Genomic-Enabled Prediction of Ordinal Data with Bayesian Logistic Ordinal Regression
Author(s) -
Osval A. MontesinosLópez,
Abelardo MontesinosLópez,
José Crossa,
Juan Burgueño,
Kent M. Eskridge
Publication year - 2015
Publication title -
g3 genes genomes genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.468
H-Index - 66
ISSN - 2160-1836
DOI - 10.1534/g3.115.021154
Subject(s) - ordinal regression , ordinal data , categorical variable , probit model , logistic regression , statistics , probit , ordered logit , bayesian probability , context (archaeology) , computer science , logit , ordered probit , econometrics , gibbs sampling , data mining , mathematics , artificial intelligence , paleontology , biology
Most genomic-enabled prediction models developed so far assume that the response variable is continuous and normally distributed. The exception is the probit model, developed for ordered categorical phenotypes. In statistical applications, because of the easy implementation of the Bayesian probit ordinal regression (BPOR) model, Bayesian logistic ordinal regression (BLOR) is implemented rarely in the context of genomic-enabled prediction [sample size (n) is much smaller than the number of parameters (p)]. For this reason, in this paper we propose a BLOR model using the Pólya-Gamma data augmentation approach that produces a Gibbs sampler with similar full conditional distributions of the BPOR model and with the advantage that the BPOR model is a particular case of the BLOR model. We evaluated the proposed model by using simulation and two real data sets. Results indicate that our BLOR model is a good alternative for analyzing ordinal data in the context of genomic-enabled prediction with the probit or logit link.

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