Sensitivity analysis in robust and kernel canonical correlation analysis

A. Alam, M. Nasser, K. Fukumizu
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引用次数: 14

Abstract

A number of measures of canonical correlation coefficient are now used in pattern recognition in the different literature. Some robust forms of classical canonical correlation coefficient are introduced recently to address the robustness issue of the canonical coefficient in the presence of outliers and departure from normality. Also a few number of kernels are used in canonical analysis to capture nonlinear relationship in data space, which is linear in some higher dimensional feature space. But not much work has been done to investigate their relative performances through simulation and also from the view point of sensitivity. In this paper an attempt has been made to compare performances of kernel canonical correlation coefficients (Gaussian, Laplacian and Polynomial) with that of classical and robust canonical correlation coefficient measures using simulation and influence function. We investigate the bias, standard error, MSE, qualitative robustness index, sensitivity curve of each estimator under a variety of situations and also employ boxplots and scatter plots of canonical variates to judge their performances. We observe that the class of kernel estimators perform better than the class of classical and robust estimators in general and the kernel estimator with Laplacian function has shown the best performance for large sample size.
鲁棒和核典型相关分析中的敏感性分析
在不同的文献中,许多典型相关系数的度量现在被用于模式识别。为了解决典型相关系数在异常值和偏离正态时的鲁棒性问题,最近引入了经典典型相关系数的一些鲁棒形式。在典型分析中也使用少量的核来捕捉数据空间中的非线性关系,这些关系在某些高维特征空间中是线性的。但是,从仿真和灵敏度的角度对它们的相对性能进行研究的工作还不多。本文尝试用模拟和影响函数比较核典型相关系数(高斯、拉普拉斯和多项式)与经典和鲁棒典型相关系数测度的性能。我们研究了各种情况下每个估计器的偏置、标准误差、MSE、定性稳健性指数、灵敏度曲线,并使用典型变量的箱线图和散点图来判断它们的性能。我们观察到核估计量的性能优于经典估计量和鲁棒估计量,其中带拉普拉斯函数的核估计量在大样本情况下表现出最好的性能。
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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