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Employing a Monte Carlo Algorithm in Newton-Type Methods for Restricted Maximum Likelihood Estimation of Genetic Parameters

机译:在牛顿型方法中采用蒙特卡罗算法进行遗传参数的最大似然估计

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摘要

Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maximum likelihood (REML) is computationally efficient for large data sets and complex linear mixed effects models. However, efficiency may be lost due to the need for a large number of iterations of the EM algorithm. To decrease the computing time we explored the use of faster converging Newton-type algorithms within MC REML implementations. The implemented algorithms were: MC Newton-Raphson (NR), where the information matrix was generated via sampling; MC average information(AI), where the information was computed as an average of observed and expected information; and MC Broyden's method, where the zero of the gradient was searched using a quasi-Newton-type algorithm. Performance of these algorithms was evaluated using simulated data. The final estimates were in good agreement with corresponding analytical ones. MC NR REML and MC AI REML enhanced convergence compared to MC EM REML and gave standard errors for the estimates as a by-product. MC NR REML required a larger number of MC samples, while each MC AI REML iteration demanded extra solving of mixed model equations by the number of parameters to be estimated. MC Broyden's method required the largest number of MC samples with our small data and did not give standard errors for the parameters directly. We studied the performance of three different convergence criteria for the MC AI REML algorithm. Our results indicate the importance of defining a suitable convergence criterion and critical value in order to obtain an efficient Newton-type method utilizing a MC algorithm. Overall, use of a MC algorithm with Newton-type methods proved feasible and the results encourage testing of these methods with different kinds of large-scale problem settings.
机译:对于大型数据集和复杂的线性混合效应模型,由蒙特卡洛(MC)期望最大化(EM)限制最大似然(REML)估计方差分量的计算效率很高。但是,由于需要大量的EM算法迭代,效率可能会损失。为了减少计算时间,我们探索了在MC REML实现中使用更快收敛的牛顿型算法的方法。实现的算法是:MC Newton-Raphson(NR),其中信息矩阵是通过采样生成的; MC平均信息(AI),其中信息是作为观测和预期信息的平均值计算的;和MC Broyden方法,其中使用准牛顿型算法搜索梯度的零。使用模拟数据评估了这些算法的性能。最终估算与相应的分析估算非常吻合。与MC EM REML相比,MC NR REML和MC AI REML增强了收敛性,并且作为估计的副产品给出了标准误差。 MC NR REML需要大量的MC样本,而每次MC AI REML迭代都需要通过要估计的参数数量来额外求解混合模型方程。 MC Broyden的方法需要大量的MC样本,而我们的数据很少,并且没有直接给出参数的标准误差。我们研究了MC AI REML算法的三种不同收敛标准的性能。我们的结果表明定义合适的收敛准则和临界值的重要性,以便获得利用MC算法的高效牛顿型方法。总的来说,将MC算法与牛顿型方法结合使用是可行的,结果鼓励在不同种类的大规模问题环境中测试这些方法。

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