数学
算法
特征向量
共轭梯度法
计算
线性代数
域代数上的
正交性
非线性系统
分治特征值算法
几何学
纯数学
量子力学
物理
作者
Alan Edelman,T. A. Arias,Steven T. Smith
标识
DOI:10.1137/s0895479895290954
摘要
In this paper we develop new Newton and conjugate gradient algorithms on the Grassmann and Stiefel manifolds. These manifolds represent the constraints that arise in such areas as the symmetric eigenvalue problem, nonlinear eigenvalue problems, electronic structures computations, and signal processing. In addition to the new algorithms, we show how the geometrical framework gives penetrating new insights allowing us to create, understand, and compare algorithms. The theory proposed here provides a taxonomy for numerical linear algebra algorithms that provide a top level mathematical view of previously unrelated algorithms. It is our hope that developers of new algorithms and perturbation theories will benefit from the theory, methods, and examples in this paper.
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