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Bayesian estimation in animal breeding using the Dirichlet process prior for correlated random effects

机译:使用相关随机效应的Dirichlet过程进行动物育种的贝叶斯估计

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摘要

In the case of the mixed linear model the random effects are usually assumed to be normally distributed in both the Bayesian and classical frameworks. In this paper, the Dirichlet process prior was used to provide nonparametric Bayesian estimates for correlated random effects. This goal was achieved by providing a Gibbs sampler algorithm that allows these correlated random effects to have a nonparametric prior distribution. A sampling based method is illustrated. This method which is employed by transforming the genetic covariance matrix to an identity matrix so that the random effects are uncorrelated, is an extension of the theory and the results of previous researchers. Also by using Gibbs sampling and data augmentation a simulation procedure was derived for estimating the precision parameter M associated with the Dirichlet process prior. All needed conditional posterior distributions are given. To illustrate the application, data from the Elsenburg Dormer sheep stud were analysed. A total of 3325 weaning weight records from the progeny of 101 sires were used.
机译:在混合线性模型的情况下,通常假定随机效应在贝叶斯框架和经典框架中均呈正态分布。在本文中,Dirichlet过程先验用于提供相关随机效应的非参数贝叶斯估计。通过提供一种Gibbs采样器算法来实现此目标,该算法允许这些相关的随机效应具有非参数的先验分布。示出了基于采样的方法。该方法是通过将遗传协方差矩阵转换为恒等矩阵,使随机效应不相关的,是对理论和先前研究人员的结果的扩展。同样,通过使用吉布斯采样和数据扩充,推导了模拟程序,用于估计与先前的狄利克雷过程有关的精度参数M。给出了所有需要的条件后验分布。为了说明此应用程序,分析了Elsenburg Dormer羊种的数据。总共使用了101个公猪的后代的3325个断奶体重记录。

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