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Optimization-based algorithms for tensor decompositions: canonical polyadic decomposition, decomposition in rank-$(L_r,L_r,1)$ terms and a new generalization

机译:张量分解的基于优化的算法:规范多态分解,rank-$(L_r,L_r,1)$项分解和新的概括

摘要

The canonical polyadic and rank-$(L_r,L_r,1)$ block term decomposition (CPD and BTD, respectively) are two closely related tensor decompositions. The CPD and, recently, BTD are important tools in psychometrics, chemometrics, neuroscience, and signal processing. We present a decomposition that generalizes these two and develop algorithms for its computation. Among these algorithms are alternating least squares schemes, several general unconstrained optimization techniques, and matrix-free nonlinear least squares methods. In the latter we exploit the structure of the Jacobian's Gramian to reduce computational and memory cost. Combined with an effective preconditioner, numerical experiments confirm that these methods are among the most efficient and robust currently available for computing the CPD, rank-$(L_r,L_r,1)$ BTD, and their generalized decomposition.
机译:规范的多元分解和秩$(L_r,L_r,1)$块项分解(分别为CPD和BTD)是两个紧密相关的张量分解。 CPD和最近的BTD是心理计量学,化学计量学,神经科学和信号处理中的重要工具。我们提出了将这两个概化的分解,并开发了用于其计算的算法。这些算法包括交替最小二乘方案,几种通用的无约束优化技术以及无矩阵的非线性最小二乘法。在后者中,我们利用Jacobian的Gramian的结构来减少计算和存储成本。结合有效的预处理器,数值实验证实,这些方法是当前可用于计算CPD,rank-((L_r,L_r,1)$ BTD和其广义分解的最有效,最可靠的方法。

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