Reduced Higher Order SVD: ubiquitous rank-reduction method in tensor-based scientific computing
Venera Khoromskaia, Boris N. Khoromskij

TL;DR
This paper reviews and advances the Reduced Higher Order SVD (RHOSVD) method, a key tensor rank reduction technique, demonstrating its theoretical stability and broad applicability in scientific computing and data modeling.
Contribution
The paper introduces new theoretical insights and computational techniques for RHOSVD, enhancing its stability and effectiveness in complex tensor-based problems.
Findings
RHOSVD is effective for rank reduction in tensor computations.
Stability analysis confirms robustness of RHOSVD.
Applications include bio-molecular modeling and PDE control problems.
Abstract
Tensor numerical methods, based on the rank-structured tensor representation of -variate functions and operators, are designed to provide complexity of numerical calculations on grids contrary to scaling by conventional grid-based methods. However, multiple tensor operations may lead to enormous increase in the tensor ranks (curse of ranks) of the target data, making calculation intractable. Therefore one of the most important steps in tensor calculations is the robust and efficient rank reduction procedure which should be performed many times in the course of various tensor transforms in multidimensional operator and function calculus. The rank reduction scheme based on the Reduced Higher Order SVD (RHOSVD) introduced in [33] played a significant role in the development of tensor numerical methods. Here, we briefly survey the essentials of RHOSVD…
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Taxonomy
TopicsTensor decomposition and applications · Solar and Space Plasma Dynamics
