Symmetric tensor decomposition by an iterative eigendecomposition algorithm
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摘要
We present an iterative algorithm, called the symmetric tensor eigen-rank-one iterative decomposition (STEROID), for decomposing a symmetric tensor into a real linear combination of symmetric rank-1 unit-norm outer factors using only eigendecompositions and least-squares fitting. Originally designed for a symmetric tensor with an order being a power of two, STEROID is shown to be applicable to any order through an innovative tensor embedding technique. Numerical examples demonstrate the high efficiency and accuracy of the proposed scheme even for large scale problems. Furthermore, we show how STEROID readily solves a problem in nonlinear block-structured system identification and nonlinear state-space identification.
论文关键词:15A69,15A18,15A06,Symmetric tensor,Decomposition,Rank-1,Eigendecomposition,Least-squares
论文评审过程:Received 8 July 2015, Revised 5 April 2016, Available online 3 June 2016, Version of Record 16 June 2016.
论文官网地址:https://doi.org/10.1016/j.cam.2016.05.024