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首页> 外文期刊>SIAM Journal on Scientific Computing >ON USING CHOLESKY-BASED FACTORIZATIONS AND REGULARIZATION FOR SOLVING RANK-DEFICIENT SPARSE LINEAR LEAST-SQUARES PROBLEMS
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ON USING CHOLESKY-BASED FACTORIZATIONS AND REGULARIZATION FOR SOLVING RANK-DEFICIENT SPARSE LINEAR LEAST-SQUARES PROBLEMS

机译:求解基于巧克力的基于因素和正规化来解决级别缺乏稀疏线性最小二乘问题

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摘要

By examining the performance of modern parallel sparse direct solvers and exploiting our knowledge of the algorithms behind them, we perform numerical experiments to study how they can be used to efficiently solve rank-deficient sparse linear least-squares problems arising from practical applications. The Cholesky factorization of the normal equations breaks down when the least-squares problem is rank-deficient, while applying a symmetric indefinite solver to the augmented system can give an unacceptable level of fill in the factors. To try to resolve these difficulties, we consider a regularization procedure that modifies the diagonal of the unregularized matrix. This leads to matrices that are easier to factorize. We consider both the regularized normal equations and the regularized augmented system. We employ the computed factors of the regularized systems as preconditioners with an iterative solver to obtain the solution of the original (unregularized) problem. Furthermore, we look at using limited-memory incomplete Cholesky-based factorizations and how these can offer the potential to solve very large problems.
机译:通过检查现代平行稀疏直接求解器的性能并利用我们对它们背后的算法的知识,我们执行数值实验,研究它们如何用于有效地解决实际应用产生的污垢缺乏稀疏线性最小二乘问题。当最小二乘问题是尺寸缺陷时,正常方程的Cholesky分解在缺陷时,在将对称的无限求解器应用于增强系统的同时,可以在因素中施加不可接受的填充水平。要尝试解决这些困难,我们考虑修改未反相大矩阵的对角线的正则化过程。这导致更容易定位的矩阵。我们考虑正则正常方程和正则化的增强系统。我们使用正则化系统的计算因子作为具有迭代求解器的预处理器,以获得原始(未反相)问题的解决方案。此外,我们查看使用基于有限的内存不完整的挑剔的因素,以及如何提供解决非常大的问题的可能性。

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