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MAKING REML COMPUTATIONALLY FEASIBLE FOR LARGE DATA SETS: USE OF THE GIBBS SAMPLER

机译:对大型数据集进行REML计算是可行的:使用GIBBS采样器

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REML (restricted maximum likelihood) has become the preferred method for estimating variance components. Except for relatively simple special cases, the computation of REML estimates requires the use of an iterative algorithm. A number of algorithms have been proposed; they can be classified as derivative-free, first-order, or second-order. The computational requirements of a first-order algorithm are only moderately greater than those of a derivative-free algorithm and are considerably less than those of a second-order algorithm. First-order algorithms include the EM algorithm and various algorithms derived from the REML likelihood equations by the method of successive approximations. They also include so-called linearized algorithms, which appear to have superior convergence properties. With conventional numerical methods, the computations required to obtain the REML iterates can be very extensive, so much so as to be infeasible for very large data sets (with very large numbers of random effects). The Gibbs sampler can be used to compute the iterates of a first-order REML algorithm. This is accomplished by adapting, extending, and enhancing results on the use of the Gibbs sampler to invert positive definite matrices. In computing the REML iterates for large data sets, the use of the Gibbs sampler provides an appealing alternative to the use of conventional numerical methods.
机译:REML(受限最大似然)已成为估计方差分量的首选方法。除了相对简单的特殊情况外,REML估计值的计算需要使用迭代算法。已经提出了许多算法。它们可以分为无导数,一阶或二阶。一阶算法的计算要求仅比无导数算法的计算要求适中,而比二阶算法的计算要求低得多。一阶算法包括EM算法和通过逐次逼近法从REML似然方程派生的各种算法。它们还包括所谓的线性化算法,该算法似乎具有出色的收敛性。使用常规数值方法,获得REML迭代所需的计算可能非常广泛,以至于对于非常大的数据集(具有非常多的随机效应)不可行。吉布斯采样器可用于计算一阶REML算法的迭代次数。这可以通过使用Gibbs采样器对正定矩阵求逆来调整,扩展和增强结果来实现。在计算大型数据集的REML迭代时,使用Gibbs采样器提供了一种替代常规数值方法的有吸引力的选择。

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