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LSQR algorithm with structured preconditioner for the least squares problem in quaternionic quantum theory

机译:四元离子量子理论中带有结构预处理器的LSQR算法用于最小二乘问题

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摘要

The solution of a linear quaternionic least squares (QLS) problem can be transformed into that of a linear least squares (LS) problem with JRS-symmetric real coefficient matrix, which is suitable to be solved by developing structured iterative methods when the coefficient matrix is large and sparse. The main aim of this work is to construct a structured preconditioner to accelerate the LSQR convergence. The preconditioner is based on structure-preserving tridiagonalization to the real counterpart of the coefficient matrix of the normal equation, and the incomplete inverse upper-lower factorization related to only one symmetric positive definite tridiagonal matrix rather than four, so it is reliable and has low storage requirements. The performances of the LSQR algorithm with structured preconditioner are demonstrated by numerical experiments. (C) 2017 Elsevier Ltd. All rights reserved.
机译:线性四元最小二乘(QLS)问题的解可以转换为JRS对称实系数矩阵的线性最小二乘(LS)问题的解决方案,适合通过开发结构迭代法来解决。大而稀疏。这项工作的主要目的是构造一个结构化的预处理器,以加速LSQR收敛。前置条件基于对等式的系数矩阵的实数对应部分的保结构三对角线化,并且不完全逆上下分解与一个对称正定三对角线矩阵有关,而不是四个,因此可靠且低存储要求。数值实验证明了带结构预处理器的LSQR算法的性能。 (C)2017 Elsevier Ltd.保留所有权利。

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