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On JEVD of semi-definite positive matrices and CPD of nonnegative tensors

机译:半定正矩阵的JEVD和非负张量的CPD

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In this paper, we mainly address the problem of Joint EigenValue Decomposition (JEVD) subject to nonnegative constraints on the eigenvalues of the matrices to be diagonalized. An efficient method based on the Alternating Direction Method of Multipliers (ADMM) is designed. ADMM provides an elegant approach for handling nonnegativity constraints, while taking advantage of the structure of the objective function. Numerical tests on simulated matrices show the interest of the proposed method for low Signal-to-Noise Ratio (SNR) values when the similarity transformation matrix is ill-conditioned. The ADMM was recently used for the Canonical Polyadic Decomposition (CPD) of nonnegative tensors leading to the ADMoM algorithm. We show through computer results that DIAG+, a semi-algebraic CPD method using our ADMM-based JEVD+ algorithm, will give a better estimation of factors than ADMoM in the presence of swamps. DIAG+ also appears to be less time-consuming than ADMoM when low-rank tensors of high dimensions are considered.
机译:在本文中,我们主要解决联合特征值分解(JEVD)问题,该问题受到对角化矩阵特征值的非负约束。设计了一种基于乘数交变方向法(ADMM)的有效方法。 ADMM提供了一种优雅的方法来处理非负约束,同时利用了目标函数的结构。在模拟矩阵上进行的数值测试表明,当相似性转换矩阵条件不佳时,所提出的方法对于低信噪比(SNR)值很感兴趣。 ADMM最近用于导致ADMoM算法的非负张量的规范多态分解(CPD)。通过计算机结果显示,在存在沼泽的情况下,使用基于ADMM的JEVD +算法的半代数CPD方法DIAG +将比ADMoM更好地估算因子。当考虑到高维的低秩张量时,DIAG +似乎比ADMoM耗时少。

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