Least-square approach for singular value decompositions of scattering problems

PHYSICAL REVIEW C(2022)

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摘要
It was recently observed that chiral two-body interactions can be efficiently represented using matrix fac-torization techniques such as the singular value decomposition. However, the exploitation of these low-rank structures in a few-or many-body framework is nontrivial and requires reformulations that explicitly utilize the decomposition format. In this work, we present a general least-square approach that is applicable to different few-and many-body frameworks and allows for an efficient reduction to a low number of singular values in the least-square iteration. We verify the feasibility of the least-square approach by solving the Lippmann-Schwinger equation in a factorized form. The resulting low-rank approximations of the T matrix are found to fully capture scattering observables. Potential applications of the least-square approach to other frameworks with the goal of employing tensor factorization techniques are discussed.
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关键词
singular value decompositions,least-square
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