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Computational advances in sparse L1-norm principal-component analysis of multi-dimensional data

机译:多维数据的稀疏L1范数主成分分析的计算进展

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We consider the problem of extracting a sparse Li-norm principal component from a data matrix X ϵ RD×Nof N observation vectors of dimension D. Recently, an optimal algorithm was presented in the literature for the computation of sparse L1-norm principal components with complexity O(NS) where S is the desired sparsity. In this paper, we present an efficient suboptimal algorithm of complexity O(N2(N + D)). Extensive numerical studies demonstrate the near-optimal performance of the proposed algorithm and its strong resistance to faulty measurements/outliers in the data matrix.
机译:我们考虑从数据矩阵X ϵ R中提取稀疏Li-norm主成分的问题 D×N D维的N个观测向量的分布。最近,文献中提出了一种用于计算稀疏L的最优算法 1 范数复杂度为O(N S ),其中S是所需的稀疏度。在本文中,我们提出了一种有效的次优算法,其复杂度为O(N 2 (N + D))。大量的数值研究表明,所提出算法的性能接近最佳,并且对数据矩阵中的错误测量值/异常值具有很强的抵抗力。

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