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I/O efficient QR and QZ algorithms

机译:I / O高效的QR和QZ算法

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摘要

The QR algorithm solves the standard eigenvalue problem. Analogously, the QZ-algorithm solves the generalised eigenvalue problem. Both are iterative algorithms. We study these algorithms on the External Memory model introduced by Aggarwal and Vitter and analyse them for their 110 and seek complexities. We analyse the multi shift QR algorithm [1]; this algorithm chases m × m bulges, where m is the number of shifts, using both matrix-vector and matrix-matrix operations. We also investigate the small-bulge multishift QR algorithm [2] which was proposed to avoid the phenomenon called shift blurring. We propose a tile based small-bulge multi shift QR algorithm which is scalable and more amenable for multicore architecture than the traditional panel based algorithms and that under certain conditions of the number of shifts has better seek and 110 complexities. We prove analogous results for the QZ algorithm [3] too.
机译:QR算法解决了标准特征值问题。类似地,QZ算法解决了广义特征值问题。两者都是迭代算法。我们在由Aggarwal和Vitter引入的“外部存储器”模型上研究了这些算法,并对其110进行了分析并寻求复杂性。我们分析了多位移QR算法[1];该算法使用矩阵矢量和矩阵矩阵运算来追赶m×m凸起,其中m是移位数。我们还研究了小凸起的多位移QR算法[2],该算法是为了避免称为位移模糊的现象而提出的。我们提出了一种基于图块的小凸起多移位QR算法,该算法比传统的基于面板的算法具有可伸缩性,并且更适合多核体系结构,并且在某些移位条件下具有更好的寻道和110的复杂度。我们也证明了QZ算法的相似结果[3]。

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