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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Computational and space complexity analysis of SubXPCA
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Computational and space complexity analysis of SubXPCA

机译:SubXPCA的计算和空间复杂度分析

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摘要

Principal Component Analysis (PCA) is one of the well-known linear dimensionality reduction techniques in the literature. Large computational requirements of PCA and its insensitivity to 'local' variations in patterns motivated to propose partitional based PCA approaches. It is also observed that these partitioning methods are incapable of extracting 'global' information in patterns thus showing lower dimensionality reduction. To alleviate the problems faced by PCA and the partitioning based PCA methods, SubXPCA was proposed to extract principal components with global and local information. In this paper, we prove analytically that (i) SubXPCA shows its computational efficiency up to a factor of k (k≥2) as compared to PCA and competitive to an existing partitioning based PCA method (SubPCA), (ii) SubXPCA shows much lower classification time as compared to SubPCA method, (iii) SubXPCA and SubPCA outperform PCA by a factor up to k (k≥2) in terms of space complexity. The effectiveness of SubXPCA is demonstrated upon a UCI data set and ORL face data.
机译:主成分分析(PCA)是文献中众所周知的线性降维技术之一。 PCA的大量计算需求及其对模式“局部”变化的不敏感,促使人们提出基于分区的PCA方法。还可以观察到,这些分区方法无法以模式提取“全局”信息,因此显示出较低的维数减少。为了缓解PCA和基于分区的PCA方法所面临的问题,提出了SubXPCA来提取具有全局和局部信息的主成分。在本文中,我们通过分析证明:(i)SubXPCA与PCA相比显示出高达k(k≥2)的计算效率,并且与现有的基于分区的PCA方法(SubPCA)相比具有竞争优势;(ii)SubXPCA显示出很多与SubPCA方法相比,分类时间更短;(iii)就空间复杂度而言,SubXPCA和SubPCA比PCA高出k倍(k≥2)。 SubXPCA的有效性通过UCI数据集和ORL人脸数据得到证明。

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