Multigrid methods combined with low-rank approximation for tensor structured Markov chains
Numerical Analysis
2016-05-23 v1
Abstract
Markov chains that describe interacting subsystems suffer, on the one hand, from state space explosion but lead, on the other hand, to highly structured matrices. In this work, we propose a novel tensor-based algorithm to address such tensor structured Markov chains. Our algorithm combines a tensorized multigrid method with AMEn, an optimization-based low-rank tensor solver, for addressing coarse grid problems. Numerical experiments demonstrate that this combination overcomes the limitations incurred when using each of the two methods individually. As a consequence, Markov chain models of unprecedented size from a variety of applications can be addressed.
Cite
@article{arxiv.1605.06246,
title = {Multigrid methods combined with low-rank approximation for tensor structured Markov chains},
author = {Matthias Bolten and Karsten Kahl and Daniel Kressner and Francisco Macedo and Sonja Sokolović},
journal= {arXiv preprint arXiv:1605.06246},
year = {2016}
}
Comments
10 pages, 7 figures