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Scalable and robust PCA approach with random column/row sampling

机译:具有随机列/行采样的可扩展且强大的PCA方法

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This paper develops and analyzes a randomized design for robust Principal Component Analysis (PCA). In the proposed randomized method, a data sketch is constructed using random row sampling followed by random column sampling. The proposed randomized approach is shown to bring about substantial savings in complexity and memory requirements for robust subspace learning over conventional approaches that use the full scale data. A characterization of the sample and computational complexity for the randomized approach is derived. It is shown that the correct subspace can be recovered with computational and sample complexity that are almost independent of the size of the data. The results of the mathematical analysis are confirmed through numerical simulations using both synthetic and real data.
机译:本文开发并分析了用于鲁棒主成分分析(PCA)的随机设计。在提出的随机方法中,使用随机行采样然后进行随机列采样来构造数据草图。结果表明,与使用满量程数据的常规方法相比,所提出的随机方法可为鲁棒子空间学习带来显着的复杂性和内存需求节省。得出了样本特征和随机方法的计算复杂性。结果表明,可以用几乎与数据大小无关的计算和样本复杂度来恢复正确的子空间。数学分析的结果通过使用合成数据和实际数据的数值模拟得到证实。

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