首页> 外文期刊>Journal of Animal Breeding and Genetics >Employing a Monte Carlo algorithm in expectation maximization restricted maximum likelihood estimation of the linear mixed model.
【24h】

Employing a Monte Carlo algorithm in expectation maximization restricted maximum likelihood estimation of the linear mixed model.

机译:在期望最大化中采用蒙特卡罗算法限制了线性混合模型的最大似然估计。

获取原文
获取原文并翻译 | 示例
           

摘要

Multiple-trait and random regression models have multiplied the number of equations needed for the estimation of variance components. To avoid inversion or decomposition of a large coefficient matrix, we propose estimation of variance components by Monte Carlo expectation maximization restricted maximum likelihood (MC EM REML) for multiple-trait linear mixed models. Implementation is based on full-model sampling for calculating the prediction error variances required for EM REML. Performance of the analytical and the MC EM REML algorithm was compared using a simulated and a field data set. For field data, results from both algorithms corresponded well even with one MC sample within an MC EM REML round. The magnitude of the standard errors of estimated prediction error variances depended on the formula used to calculate them and on the MC sample size within an MC EM REML round. Sampling variation in MC EM REML did not impair the convergence behaviour of the solutions compared with analytical EM REML analysis. A convergence criterion that takes into account the sampling variation was developed to monitor convergence for the MC EM REML algorithm. For the field data set, MC EM REML proved far superior to analytical EM REML both in computing time and in memory need.
机译:多特征和随机回归模型使估计方差分量所需的方程式数量成倍增加。为避免大系数矩阵的求逆或分解,我们提出了针对多特征线性混合模型的蒙特卡洛期望最大化限制最大似然(MC EM REML)估计方差分量。该实现基于全模型采样,用于计算EM REML所需的预测误差方差。使用模拟和现场数据集比较了分析方法和MC EM REML算法的性能。对于现场数据,即使在MC EM REML回合中使用一个MC样本,两种算法的结果也非常吻合。估计的预测误差方差的标准误差的大小取决于用于计算它们的公式以及MC EM REML回合内的MC样本大小。与分析型EM REML分析相比,MC EM REML中的采样变化不会损害解决方案的收敛性。开发了一种考虑了采样变化的收敛准则,以监视MC EM REML算法的收敛。对于现场数据集,在计算时间和内存需求方面,MC EM REML被证明远远优于分析EM REML。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号