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On the Lanczos and Golub-Kahan reduction methods applied to discrete ill-posed problems

机译:关于Lanczos和Golub-Kahan约简方法在离散不适定问题上的应用

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The symmetric Lanczos method is commonly applied to reduce large-scale symmetric linear discrete ill-posed problems to small ones with a symmetric tridiagonal matrix. We investigate how quickly the non-negative subdiagonal entries of this matrix decay to zero. Their fast decay to zero suggests that there is little benefit in expressing the solution of the discrete ill-posed problems in terms of the eigenvectors of the matrix compared with using a basis of Lanczos vectors, which are cheaper to compute. Similarly, we show that the solution subspace determined by the LSQR method when applied to the solution of linear discrete ill-posed problems with a nonsymmetric matrix often can be used instead of the solution subspace determined by the singular value decomposition without significant, if any, reduction of the quality of the computed solution. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:对称Lanczos方法通常用于将大规模对称线性离散不适定问题简化为带有对称三对角矩阵的小问题。我们调查该矩阵的非负对角线条目衰减到零的速度有多快。它们的快速衰减到零表明,与使用Lanczos向量的基础相比,用矩阵的特征向量来表示离散不适定问题的解几乎没有什么好处。同样,我们表明,当将LSQR方法确定的解决方案子空间应用于具有非对称矩阵的线性离散不适定问题的解决方案时,通常可以使用它代替奇异值分解确定的解决方案子空间,而无需进行任何有意义的处理,降低计算解决方案的质量。版权所有(C)2015 John Wiley&Sons,Ltd.

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