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Oblique Rotaton in Canonical Correlation Analysis Reformulated as Maximizing the Generalized Coefficient of Determination

机译:将规范相关分析中的斜旋转重新构造为最大化确定的广义系数

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摘要

To facilitate the interpretation of canonical correlation analysis (CCA) solutions, procedures have been proposed in which CCA solutions are orthogonally rotated to a simple structure. In this paper, we consider oblique rotation for CCA to provide solutions that are much easier to interpret, though only orthogonal rotation is allowed in the existing formulations of CCA. Our task is thus to reformulate CCA so that its solutions have the freedom of oblique rotation. Such a task can be achieved using Yanai’s (Jpn. J. Behaviormetrics 1:46–54, 1974; J. Jpn. Stat. Soc. 11:43–53, 1981) generalized coefficient of determination for the objective function to be maximized in CCA. The resulting solutions are proved to include the existing orthogonal ones as special cases and to be rotated obliquely without affecting the objective function value, where ten Berge’s (Psychometrika 48:519–523, 1983) theorems on suborthonormal matrices are used. A real data example demonstrates that the proposed oblique rotation can provide simple, easily interpreted CCA solutions.
机译:为了便于解释规范相关分析(CCA)解决方案,已经提出了将CCA解决方案正交旋转为简单结构的过程。在本文中,我们认为CCA的倾斜旋转可提供更易于解释的解决方案,尽管在CCA的现有公式中仅允许正交旋转。因此,我们的任务是重新构造CCA,使其解决方案具有倾斜旋转的自由度。可以使用Yanai(Jpn。J. Behaviormetrics 1:46-54,1974; J. Jpn。Stat。Soc。11:43-53,1981)的广义确定系数来实现这一任务,以使目标函数最大化。 CCA。证明了所得的解决方案包括特殊情况下的现有正交解,并且在不影响目标函数值的情况下进行了倾斜旋转,其中使用了十个关于次正交矩阵的Berge定理(Psychometrika 48:519-523,1983)。一个真实的数据示例表明,建议的倾斜旋转可以提供简单易懂的CCA解决方案。

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  • 来源
    《Psychometrika》 |2013年第3期|526-537|共12页
  • 作者单位

    Graduate School of Human Sciences Osaka University">(1);

    Graduate School of Human Sciences Osaka University">(1);

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