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Abstract

The testing of Bayesian point null hypotheses on variance component models have resulted in a tough assignment for which no clear and generally accepted method exists. In this work we present what we believe is a succeeding approach to such a task. It is based on a simple reparameterization of the model in terms of the total variance and the proportion of the additive genetic variance with respect to it, as well as on the explicit inclusion on the prior probability of a discrete component at origin. The reparameterization was used to bypass an arbitrariness related to the impropriety of uninformative priors onto unbounded variables while the discrete component was necessary to overcome the zero probability assigned to sets of null measure by the usual continuous variable models. The method was tested against computer simulations with appealing results.

Details

Title
Hypothesis testing for the genetic background of quantitative traits
Author
García-Cortés, Luis Alberto 1 ; Cabrillo, Carlos 2 ; Moreno, Carlos 1 ; Varona, Luis 3 

 Facultad de Veterinaria, Departamento de Genética, Zaragoza, Spain (GRID:grid.11205.37) (ISNI:0000000121528769) 
 CSIC, Instituto de Óptica "Daza de Valdés", Madrid, Spain (GRID:grid.4711.3) (ISNI:0000000121834846) 
 Centro UdL-IRTA, Área de Producción Animal, Lleida, Spain (GRID:grid.11205.37) 
Pages
3
Publication year
2001
Publication date
Feb 2001
Publisher
Springer Nature B.V.
ISSN
0999193X
e-ISSN
12979686
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2922322530
Copyright
© INRA, EDP Sciences 2001.