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Computing several eigenvalues of nonlinear eigenvalue problems by selection

机译:选择通过选择计算非线性特征值问题的几个特征值

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摘要

Computing more than one eigenvalue for (large sparse) one-parameter polynomial and general nonlinear eigenproblems, as well as for multiparameter linear and nonlinear eigenproblems, is a much harder task than for standard eigenvalue problems. We present simple but efficient selection methods based on divided differences to do this. Selection means that the approximate eigenpair is picked from candidate pairs that satisfy a certain suitable criterion. The goal of this procedure is to steer the process away from already detected pairs. In contrast to locking techniques, it is not necessary to keep converged eigenvectors in the search space, so that the entire search space may be devoted to new information. The selection techniques are applicable to many types of matrix eigenvalue problems; standard deflation is feasible only for linear one-parameter problems. The methods are easy to understand and implement. Although the use of divided differences is well known in the context of nonlinear eigenproblems, the proposed selection techniques are new for one-parameter problems. For multiparameter problems, we improve on and generalize our previous work. We also show how to use divided differences in the framework of homogeneous coordinates, which may be appropriate for generalized eigenvalue problems with infinite eigenvalues. While the approaches are valuable alternatives for one-parameter nonlinear eigenproblems, they seem the only option for multiparameter problems.
机译:计算多个特征值(大稀疏)一参数多项式和一般非线性eIgenProblems,以及多游览器线性和非线性eIgenProble,是一个比标准特征值问题更难的任务。我们呈现简单但有效的选择方法,基于划分的差异来执行此操作。选择意味着近似的特征,从候选成对拾取,以满足某个合适的标准。此程序的目标是将过程引导远离已经检测到的对。与锁定技术相反,不需要在搜索空间中保持会聚的特征向量,使得整个搜索空间可以专门用于新信息。选择技术适用于许多类型的矩阵特征值问题;标准通货紧缩仅适用于线性单参数问题。这些方法很容易理解和实施。虽然在非线性egenProbles的背景下使用划分的差异,但是所提出的选择技术对于一个参数问题是新的。对于多游艇物问题,我们改进并概括了我们以前的工作。我们还展示了如何在均质坐标框架中使用分裂差异,这可能适用于无限特征值的广义特征值问题。虽然该方法是一个参数非线性eigenProblems的有价值的替代方案,但它们似乎是多游艇率问题的唯一选择。

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