Noda Iteration for Computing Generalized Tensor Eigenpairs
Abstract
In this paper, we propose the tensor Noda iteration (NI) and its inexact version for solving the eigenvalue problem of a particular class of tensor pairs called generalized -tensor pairs. A generalized -tensor pair consists of a weakly irreducible nonnegative tensor and a nonsingular -tensor within a linear combination. It is shown that any generalized -tensor pair admits a unique positive generalized eigenvalue with a positive eigenvector. A modified tensor Noda iteration(MTNI) is developed for extending the Noda iteration for nonnegative matrix eigenproblems. In addition, the inexact generalized tensor Noda iteration method (IGTNI) and the generalized Newton-Noda iteration method (GNNI) are also introduced for more efficient implementations and faster convergence. Under a mild assumption on the initial values, the convergence of these algorithms is guaranteed. The efficiency of these algorithms is illustrated by numerical experiments.
Cite
@article{arxiv.2303.01327,
title = {Noda Iteration for Computing Generalized Tensor Eigenpairs},
author = {Wanli Ma and Weiyang Ding and Yimin Wei},
journal= {arXiv preprint arXiv:2303.01327},
year = {2023}
}
Comments
45 pages, 6 figures