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Simultaneous modelling of the Cholesky decomposition of several covariance matrices

机译:多个协方差矩阵的Cholesky分解的同时建模

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摘要

A method for simultaneous modelling of the Cholesky decomposition of several covariance matrices is presented. We highlight the conceptual and computational advantages of the unconstrained parameterization of the Cholesky decomposition and compare the results with those obtained using the classical spectral (eigenvalue) and variance-correlation decompositions. All these methods amount to decomposing complicated covariance matrices into "dependence" and "variance" components, and then modelling them virtually separately using regression techniques. The entries of the "dependence" component of the Cholesky decomposition have the unique advantage of being unconstrained so that further reduction of the dimension of its parameter space is fairly simple. Normal theory maximum likelihood estimates for complete and incomplete data are presented using iterative methods such as the EM (Expectation-Maximization) algorithm and their improvements. These procedures are illustrated using a dataset from a growth hormone longitudinal clinical trial. (c) 2005 Elsevier Inc. All rights reserved.
机译:提出了一种同时建模几个协方差矩阵的Cholesky分解的方法。我们强调了Cholesky分解的无约束参数化的概念和计算优势,并将结果与​​使用经典谱(特征值)和方差相关分解获得的结果进行了比较。所有这些方法都等于将复杂的协方差矩阵分解为“依赖”和“方差”分量,然后使用回归技术对其进行虚拟建模。 Cholesky分解的“依赖”成分的条目具有不受限制的独特优势,因此,进一步减小其参数空间的维数非常简单。使用诸如EM(期望最大化)算法及其改进之类的迭代方法,提出了完整和不完整数据的正常理论最大似然估计。使用来自生长激素纵向临床试验的数据集说明了这些程序。 (c)2005 Elsevier Inc.保留所有权利。

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