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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >KRYLOV SUBSPACE METHODS FOR LINEAR SYSTEMS WITH TENSOR PRODUCT STRUCTURE
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KRYLOV SUBSPACE METHODS FOR LINEAR SYSTEMS WITH TENSOR PRODUCT STRUCTURE

机译:具有张量积结构的线性系统的Krylov子空间方法

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摘要

The numerical solution of linear systems with certain tensor product structures is considered. Such structures arise, for example, from the finite element discretization of a linear PDE on a d-dimensional hypercube. Linear systems with tensor product structure can be regarded as linear matrix equations for d = 2 and appear to be their most natural extension for d > 2. A standard Krylov subspace method applied to such a linear system suffers from the curse of dimensionality and has a computational cost that grows exponentially with d. The key to breaking the curse is to note that the solution can often be very well approximated by a vector of low tensor rank. We propose and analyze a new class of methods, so-called tensor Krylov subspace methods, which exploit this fact and attain a computational cost that grows linearly with d.
机译:考虑具有某些张量积结构的线性系统的数值解。例如,这种结构是由于d维超立方体上线性PDE的有限元离散化而产生的。具有张量积结构的线性系统可以视为d = 2的线性矩阵方程,并且似乎是d> 2的最自然的扩展。适用于此类线性系统的标准Krylov子空间方法遭受了维数的诅咒,并且具有计算成本随d呈指数增长。打破诅咒的关键是要注意,通常可以通过低张量等级的矢量很好地近似解。我们提出并分析了一类新方法,即所谓的张量Krylov子空间方法,该方法利用了这一事实并获得了随d线性增长的计算成本。

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