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Low-Rank Matrix and Tensor Completion via Adaptive Sampling

机译:通过自适应采样的低级矩阵和张量完成

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We study low rank matrix and tensor completion and propose novel algorithms that employ adaptive sampling schemes to obtain strong performance guarantees. Our algorithms exploit adaptivity to identify entries that are highly informative for learning the column space of the matrix (tensor) and consequently, our results hold even when the row space is highly coherent, in contrast with previous analyses. In the absence of noise, we show that one can exactly recover a n × n matrix of rank r from merely Ω(nr~(3/2) log(r)) matrix entries. We also show that one can recover an order T tensor using Ω(nr~(T-1/2)T~2 log(r)) entries. For noisy recovery, our algorithm consistently estimates a low rank matrix corrupted with noise using Ω(nr~(3/2)polylog(n)) entries. We complement our study with simulations that verify our theory and demonstrate the scalability of our algorithms.
机译:我们研究了低等级矩阵和张量完成,并提出了采用自适应采样方案的新算法,以获得强大的性能保证。我们的算法利用适应性来识别对学习矩阵(张量)的列空间高度信息的条目,因此,即使行空间高度相干,与先前的分析相比,我们的结果也是如此。在没有噪声的情况下,我们表明可以从仅仅ω(nr〜(3/2)log(r))矩阵条目完全恢复等级R的n×n矩阵。我们还表明,可以使用ω(nr〜(t-1/2)t〜2 log(r))条目来恢复订单t tensor。对于嘈杂的恢复,我们的算法始终如一地估计使用ω(NR〜(3/2)Polylog(N))条目的噪声损坏的低秩矩阵。我们与验证我们理论的仿真进行补充,并展示我们算法的可扩展性。

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