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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >On the best rank-1 and rank-(R1,R2,...,R-N) approximation of higher-order tensors
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On the best rank-1 and rank-(R1,R2,...,R-N) approximation of higher-order tensors

机译:关于高阶张量的最佳等级1和等级-(R1,R2,...,R-N)逼近

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In this paper we discuss a multilinear generalization of the best rank-R approximation problem for matrices, namely the approximation of a given higher-order tensor, in an optimal least-squares sense, by a tensor that has prespecified column rank value, row rank value, etc. For matrices, the solution is conceptually obtained by truncation of the singular value decomposition (SVD); however, this approach does not have a straightforward multilinear counterpart. We discuss higher-order generalizations of the power method and the orthogonal iteration method. [References: 19]
机译:在本文中,我们讨论了矩阵的最佳Rank-R逼近问题的多线性泛化,即在给定的高阶张量(最优的最小二乘意义上)与预先指定的列等级值,行等级的张量之间的近似对于矩阵,从概念上讲,该解决方案是通过截断奇异值分解(SVD)来获得的;但是,这种方法没有直接的多线性对应物。我们讨论幂方法和正交迭代方法的高阶概括。 [参考:19]

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