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Orthogonalizing EM: A Design-Based Least Squares Algorithm

机译:正交化EM:基于设计的最小二乘算法

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摘要

We introduce an efficient iterative algorithm, intended for various least squares problems, based on a design of experiments perspective. The algorithm, called orthogonalizing EM (OEM), works for ordinary least squares (OLS) and can be easily extended to penalized least squares. The main idea of the procedure is to orthogonalize a design matrix by adding new rows and then solve the original problem by embedding the augmented design in a missing data framework. We establish several attractive theoretical properties concerning OEM. For the OLS with a singular regression matrix, an OEM sequence converges to the Moore-Penrose generalized inverse-based least squares estimator. For ordinary and penalized least squares with various penalties, it converges to a point having grouping coherence for fully aliased regression matrices. Convergence and the convergence rate of the algorithm are examined. Finally, we demonstrate that OEM is highly efficient for large-scale least squares and penalized least squares problems, and is considerably faster than competing methods when n is much larger than p. Supplementary materials for this article are available online.
机译:基于实验的设计,我们引入了一种有效的迭代算法,旨在解决各种最小二乘问题。该算法称为正交EM(OEM),适用于普通最小二乘法(OLS),并且可以轻松扩展为惩罚最小二乘法。该过程的主要思想是通过添加新行来正交化设计矩阵,然后通过将增强设计嵌入到丢失的数据框架中来解决原始问题。我们建立了一些有关OEM的有吸引力的理论特性。对于具有奇异回归矩阵的OLS,OEM序列会收敛到Moore-Penrose广义基于逆的最小二乘估计量。对于具有各种惩罚的普通和惩罚最小二乘,它会收敛到对全混叠回归矩阵具有分组相干性的点。研究了算法的收敛性和收敛速度。最后,我们证明OEM对于大规模最小二乘和惩罚最小二乘问题具有很高的效率,并且当n远大于p时,它比竞争方法要快得多。可在线获得本文的补充材料。

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