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Optimal Sparse Singular Value Decomposition for High-Dimensional High-Order Data

机译:高维高阶数据的最佳稀疏奇异值分解

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摘要

In this article, we consider the sparse tensor singular value decomposition, which aims for dimension reduction on high-dimensional high-order data with certain sparsity structure. A method named sparse tensor alternating thresholding for singular value decomposition (STAT-SVD) is proposed. The proposed procedure features a novel double projection & thresholding scheme, which provides a sharp criterion for thresholding in each iteration. Compared with regular tensor SVD model, STAT-SVD permits more robust estimation under weaker assumptions. Both the upper and lower bounds for estimation accuracy are developed. The proposed procedure is shown to be minimax rate-optimal in a general class of situations. Simulation studies show that STAT-SVD performs well under a variety of configurations. We also illustrate the merits of the proposed procedure on a longitudinal tensor dataset on European country mortality rates. for this article are available online.
机译:在本文中,我们考虑稀疏张量奇异值分解,该分解旨在减少具有一定稀疏性结构的高维高阶数据的维数。提出了一种用于稀疏张量交替阈值的奇异值分解方法(STAT-SVD)。所提出的过程具有新颖的双重投影和阈值处理方案,该方案为每次迭代中的阈值处理提供了清晰的标准。与常规张量SVD模型相比,STAT-SVD在较弱的假设下允许更稳健的估计。估计精度的上限和下限都已开发出来。在一般情况下,建议的过程显示为最小最大速率最优。仿真研究表明,STAT-SVD在多种配置下均表现良好。我们还在欧洲国家死亡率的纵向张量数据集上说明了所建议程序的优点。该文章可在线获得。

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