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On multilinear principal component analysis of order-two tensors

机译:二阶张量的多线性主成分分析

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摘要

Principal component analysis is commonly used for dimension reduction in analysing high-dimensional data. Multilinear principal component analysis aims to serve a similar function for analysing tensor structure data, and has empirically been shown effective in reducing dimensionality. In this paper, we investigate its statistical properties and demonstrate its advantages. Conventional principal component analysis, which vectorizes the tensor data, may lead to inefficient and unstable prediction due to the often extremely large dimensionality involved. Multilinear principal component analysis, in trying to preserve the data structure, searches for low-dimensional projections and, thereby, decreases dimensionality more efficiently. The asymptotic theory of order-two multilinear principal component analysis, including asymptotic efficiency and distributions of principal components, associated projections, and the explained variance, is developed. A test of dimensionality is also proposed. Finally, multilinear principal component analysis is shown to improve conventional principal component analysis in analysing the Olivetti faces dataset, which is achieved by extracting a more modularly oriented basis set in reconstructing the test faces.
机译:主成分分析通常用于减少分析高维数据时的维数。多线性主成分分析旨在提供类似的功能来分析张量结构数据,并已通过经验证明有效地降低了维数。在本文中,我们调查了其统计特性并展示了其优势。将张量数据矢量化的常规主成分分析可能会导致效率低下和不稳定的预测,原因是所涉及的维数通常非常大。在尝试保留数据结构时,多线性主成分分析会搜索低维投影,从而更有效地降低维数。建立了二阶多线性主成分分析的渐近理论,包括主成分的渐近效率和分布,相关的投影以及解释的方差。还提出了尺寸测试。最后,显示了多线性主成分分析可改进分析Olivetti人脸数据集时的常规主成分分析,这是通过在重构测试人脸时提取更加模块化的基础集来实现的。

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  • 来源
    《Biometrika》 |2012年第3期|p.569-583|共15页
  • 作者

    Hung Hung;

  • 作者单位

    Institute of Epidemiology and Preventive Medicine, National Taiwan University, Taipei 10055, Taiwan hhung{at}ntu.edu.tw;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 01:12:06

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