摘要
Tensor computation is intensive and difficult. Invariably, a vital component is the truncation of tensors, so as to control the memory and associated computational requirements. Various tensor toolboxes have been designed for such a purpose, in addition to transforming tensors between different formats. In this paper, we propose a simple Q-less QR truncation technique for tensors {x(i)} with x(i)∈Rn1×⋯×nd in the simple and natural Kronecker product form. It generalizes the QR decomposition with column pivoting, adapting the well-known Gram-Schmidt orthogonalization process. The main difficulty lies in the fact that linear combinations of tensors cannot be computed or stored explicitly. All computations have to be performed on the coefficients αi in an arbitrary tensor v=∑iαix(i). The orthonormal Q factor in the QR decomposition X≡[x(1),⋯,x(p)]=QR cannot be computed but expressed as XR-1 when required. The resulting algorithm has an O(p2dn) computational complexity, with n=maxni. Some illustrative examples in the numerical solution of tensor linear equations are presented.
原文 | 英語 |
---|---|
頁(從 - 到) | 292-316 |
頁數 | 25 |
期刊 | Linear Algebra and Its Applications |
卷 | 491 |
DOIs | |
出版狀態 | 已發佈 - 2016 2月 15 |
ASJC Scopus subject areas
- 代數與數理論
- 數值分析
- 幾何和拓撲
- 離散數學和組合