학술논문

A robust and efficient implementation of LOBPCG
Document Type
article
Source
SIAM Journal on Scientific Computing. 40(5)
Subject
symmetric eigenvalue problem
LOBPCG
numerical stability
math.NA
Numerical & Computational Mathematics
Applied Mathematics
Numerical and Computational Mathematics
Computation Theory and Mathematics
Language
Abstract
Locally Optimal Block Preconditioned Conjugate Gradient (LOBPCG) is widely used to compute eigenvalues of large sparse symmetric matrices. The algorithm can suffer from numerical instability if it is not implemented with care. This is especially problematic when the number of eigenpairs to be computed is relatively large. In this paper we propose an improved basis selection strategy based on earlier work by Hetmaniuk and Lehoucq as well as a robust convergence criterion which is backward stable to enhance the robustness. We also suggest several algorithmic optimizations that improve performance of practical LOBPCG implementations. Numerical examples confirm that our approach consistently and significantly outperforms previous competing approaches in both stability and speed.