Improved approximation and visualization of the correlation matrix

J. Graffelman, Jan de Leeuw
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引用次数: 1

Abstract

The graphical representation of the correlation matrix by means of different multivariate statistical methods is reviewed, a comparison of the different procedures is presented with the use of an example data set, and an improved representation with better fit is proposed. Principal component analysis is widely used for making pictures of correlation structure, though as shown a weighted alternating least squares approach that avoids the fitting of the diagonal of the correlation matrix outperforms both principal component analysis and principal factor analysis in approximating a correlation matrix. Weighted alternating least squares is a very strong competitor for principal component analysis, in particular if the correlation matrix is the focus of the study, because it improves the representation of the correlation matrix, often at the expense of only a minor percentage of explained variance for the original data matrix, if the latter is mapped onto the correlation biplot by regression. In this article, we propose to combine weighted alternating least squares with an additive adjustment of the correlation matrix, and this is seen to lead to further improved approximation of the correlation matrix.
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改进了相关矩阵的近似和可视化
本文回顾了用不同的多元统计方法表示相关矩阵的方法,并以实例数据集对不同的方法进行了比较,提出了一种拟合更好的改进方法。主成分分析被广泛用于制作相关结构的图像,尽管如图所示,加权交替最小二乘方法避免了相关矩阵对角线的拟合,在近似相关矩阵方面优于主成分分析和主因子分析。加权交替最小二乘是主成分分析的有力竞争者,特别是如果相关矩阵是研究的重点,因为它改善了相关矩阵的表示,如果原始数据矩阵通过回归映射到相关双标图上,则通常只会牺牲一小部分可解释方差。在本文中,我们提出将加权交替最小二乘与相关矩阵的加性调整相结合,这可以进一步改善相关矩阵的近似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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