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首页> 外文期刊>Mathematics of computation >PRECONDITIONED EIGENSOLVERS FOR LARGE-SCALE NONLINEAR HERMITIAN EIGENPROBLEMS WITH VARIATIONAL CHARACTERIZATIONS. I. EXTREME EIGENVALUES
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PRECONDITIONED EIGENSOLVERS FOR LARGE-SCALE NONLINEAR HERMITIAN EIGENPROBLEMS WITH VARIATIONAL CHARACTERIZATIONS. I. EXTREME EIGENVALUES

机译:具有变化特征的大型非线性埃尔米特特征问题的预置特征解。 I.极端特征值

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摘要

Efficient computation of extreme eigenvalues of large-scale linear Hermitian eigenproblems can be achieved by preconditioned conjugate gradient (PCG) methods. In this paper, we study PCG methods for computing extreme eigenvalues of nonlinear Hermitian eigenproblems of the form T(lambda) v = 0 that admit a nonlinear variational principle. We investigate some theoretical properties of a basic CG method, including its global and asymptotic convergence. We propose several variants of single-vector and block PCG methods with deflation for computing multiple eigenvalues, and compare them in arithmetic and memory cost. Variable indefinite preconditioning is shown to be effective to accelerate convergence when some desired eigenvalues are not close to the lowest or highest eigenvalue. The efficiency of variants of PCG is illustrated by numerical experiments. Overall, the locally optimal block preconditioned conjugate gradient (LOBPCG) is the most efficient method, as in the linear setting.
机译:通过预处理共轭梯度(PCG)方法,可以有效地计算大规模线性Hermitian特征值的极限特征值。在本文中,我们研究了PCG方法,该方法用于计算形式为T(lambda)v = 0的非线性Hermitian特征问题的极限特征值,该特征值接受非线性变分原理。我们研究了基本CG方法的一些理论特性,包括其全局收敛性和渐近收敛性。我们提出了带有收缩的单向量和块PCG方法的几种变体,用于计算多个特征值,并在算术和存储成本上进行比较。当某些所需特征值不接近最低或最高特征值时,可变不确定预条件可有效加速收敛。数值实验说明了PCG变体的效率。总的来说,局部最优的块预条件共轭梯度(LOBPCG)是最有效的方法,就像在线性环境中一样。

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