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Divide-and-Conquer Computational Approach to Principal Component Analysis

机译:分割和征服主要成分分析的计算方法

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Divide-and-Conquer (DC) paradigm is one of the classical approaches for designing algorithms. Principal Component Analysis (PCA) is a widely used technique for dimensionality reduction. The existing block based PCA methods do not fully comply with a formal DC approach because (i) they may discard some of the features, due to partitioning,which may affect recognition; (ii) they do not use recursive algorithm, which is used by DC methods in general to provide natural and elegant solutions. In this paper, we apply DC approach to design a novel algorithm that computes principal components more efficiently and with dimensionality reduction competitive to PCA. Our empirical results on palmprint and face datasets demonstrate the superiority of the proposed approach in terms of recognition and computational complexity as compared to classical PCA and block-based SubXPCA methods. We also demonstrate the improved gross performance of the proposed approach over the block-based SubPCA in terms of dimensionality reduction,computational time, and recognition.
机译:划分和征服(DC)范式是设计算法的经典方法之一。主成分分析(PCA)是一种广泛使用的维度减少技术。基于块的PCA方法不完全符合正式的直流方法,因为(i)可能会丢弃某些功能,由于分区可能影响识别; (ii)它们不使用DC方法使用的递归算法,通常提供自然和优雅的解决方案。在本文中,我们应用DC方法来设计一种新的算法,可以更有效地计算主要成分,并且对PCA竞争的维数减少。与古典PCA和基于块的SubXPCA方法相比,我们对掌纹和面部数据集的实证结果证明了在识别和计算复杂性方面的优越性。我们还展示了在基于块的子公司的提高方法的提高性能,从而减少计算时间和识别。

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