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Multigrid Methods Combined With Low-Rank Approximation For Tensor-Structured Markov Chains

Bolten, Matthias
•
Kahl, Karsten
•
Kressner, Daniel  
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January 1, 2018
Electronic Transactions On Numerical Analysis

Markov chains that describe interacting subsystems suffer from state space explosion but lead 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.

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Multigrid Methods Combined With Low-Rank Approximation For Tensor-Structured Markov Chains.pdf

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http://purl.org/coar/version/c_970fb48d4fbd8a85

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