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IMPROVED BOUND FOR RANK REVEALING LU FACTORIZATIONS

机译:排位LU分解的改进边界

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摘要

In many applications it is necessary to determine the rank (or numerical rank) of a matrix. Many of these situations involve matrices that are very large order or that are sparse or that may undergo some form of modification (rank-k update, raw or column appended or removed). In these cases the singular value decomposition's cost may be prohibitively high or the decomposition may not be computationally feasible (especially for large sparse problems). We thus examine the theoretical merits of rank revealing LU (RRLU) factorizations. We find that in those cases where the nullity is small and the gap is well defined, an RRLU factorization could be a very useful tool. (C) Elsevier Science Inc., 1997. [References: 19]
机译:在许多应用中,必须确定矩阵的等级(或数字等级)。这些情况中的许多情况涉及非常大的顺序,稀疏的矩阵或可能进行某种形式的修改(秩-k更新,附加或删除的原始列或列)。在这些情况下,奇异值分解的成本可能会过高,或者分解可能在计算上不可行(尤其是对于大型稀疏问题)。因此,我们研究了揭示LU(RRLU)分解的秩的理论优点。我们发现,在无效性较小且间隙定义明确的情况下,RRLU分解可能是非常有用的工具。 (C)Elsevier Science Inc.,1997年。[参考:19]

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