多线性映射
数学
奇异值分解
多线性代数
秩(图论)
张量(固有定义)
奇异值
低秩近似
一般化
组合数学
截断(统计)
应用数学
订单(交换)
最小二乘函数近似
特征向量
数学分析
纯数学
域代数上的
算法
统计
除法代数
物理
经济
过滤代数
量子力学
估计员
财务
作者
Lieven De Lathauwer,Bart De Moor,Joos Vandewalle
标识
DOI:10.1137/s0895479898346995
摘要
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.
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