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首页> 外文期刊>SIAM Journal on Scientific Computing >Nearly optimal preconditioned methods for Hermitian eigenproblems under limited memory. Part II: Seeking many eigenvalues
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Nearly optimal preconditioned methods for Hermitian eigenproblems under limited memory. Part II: Seeking many eigenvalues

机译:有限记忆条件下的Hermitian特征问题的最佳预处理方法。第二部分:寻求许多特征值

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摘要

In a recent companion paper, we proposed two methods, GD+k and JDQMR, as nearly optimal methods for finding one eigenpair of a real symmetric matrix. In this paper, we seek nearly optimal methods for a large number, nev, of eigenpairs that work with a search space whose size is O(1), independent from nev. The motivation is twofold: avoid the additional O(nevN) storage and the O(nev(2)N) iteration costs. First, we provide an analysis of the oblique projectors required in the Jacobi-Davidson method and identify ways to avoid them during the inner iterations, either completely or partially. Second, we develop a comprehensive set of performance models for GD+k, Jacobi-Davidson type methods, and ARPACK. Based both on theoretical arguments and on our models we argue that any eigenmethod with O(1) basis size, preconditioned or not, will be superseded asymptotically by Lanczos-type methods that use O(nev) vectors in the basis. However, this may not happen until nev > O(1000). Third, we perform an extensive set of experiments with our methods and against other state-of-the-art software that validates our models and confirms our GD+k and JDQMR methods as nearly optimal within the class of O(1) basis size methods.
机译:在最近的一篇论文中,我们提出了GD + k和JDQMR这两种方法,作为寻找一个实对称矩阵一个特征对的最佳方法。在本文中,我们针对大量nev的,与大小为O(1),独立于nev的搜索空间一起工作的特征对寻求近乎最佳的方法。其动机是双重的:避免额外的O(nevN)存储和O(nev(2)N)迭代成本。首先,我们对Jacobi-Davidson方法所需的倾斜投影仪进行了分析,并确定了在内部迭代过程中完全或部分避免倾斜的方法。其次,我们为GD + k,Jacobi-Davidson类型方法和ARPACK开发了一套全面的性能模型。基于理论论证和我们的模型,我们认为,任何具有O(1)基本大小的本征方法,无论是否经过预处理,都将通过在该基础上使用O(nev)向量的Lanczos型方法渐近地取代。但是,直到nev> O(1000)才可能发生。第三,我们使用我们的方法以及其他可验证我们模型的最新软件进行广泛的实验,并确认我们的GD + k和JDQMR方法在O(1)基大小方法类别中几乎是最佳的。

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