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Influence Function and Robust Variant of Kernel Canonical Correlation Analysis

机译:核典范相关分析的影响函数和鲁棒变异

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摘要

Many unsupervised kernel methods rely on the estimation of kernel covariance operator (kernel CO) or kernel cross-covariance operator (kernel CCO). Both are sensitive to contaminated data, even when bounded positive definite kernels are used. To the best of our knowledge, there are few well-founded robust kernel methods for statistical unsupervised learning. In addition, while the influence function (IF) of an estimator can characterize its robustness, asymptotic properties and standard error, the IF of a standard kernel canonical correlation analysis (standard kernel CCA) has not been derived yet. To fill this gap, we first propose a robust kernel covariance operator (robust kernel CO) and a robust kernel cross-covariance operator (robust kernel CCO) based on a generalized loss function instead of the quadratic loss function. Second, we derive the IF for robust kernel CCO and standard kernel CCA. Using the IF of the standard kernel CCA, we can detect influential observations from two sets of data. Finally, we propose a method based on the robust kernel CO and the robust kernel CCO, called >robust kernel CCA, which is less sensitive to noise than the standard kernel CCA. The introduced principles can also be applied to many other kernel methods involving kernel CO or kernel CCO. Our experiments on both synthesized and imaging genetics data demonstrate that the proposed IF of standard kernel CCA can identify outliers. It is also seen that the proposed robust kernel CCA method performs better for ideal and contaminated data than the standard kernel CCA.
机译:许多无监督的核方法依赖于核协方差算子(内核CO)或核互协方差算子(内核CCO)的估计。即使使用有界的正定核,它们都对受污染的数据敏感。据我们所知,很少有可靠的鲁棒核方法可用于统计无监督学习。另外,虽然估计器的影响函数(IF)可以表征其鲁棒性,渐近性质和标准误差,但尚未得出标准核标准相关分析(标准核CCA)的IF。为了填补这一空白,我们首先基于广义损失函数而不是二次损失函数,提出了鲁棒的核协方差算子(鲁棒核CO)和鲁棒的核交叉协方差算子(鲁棒核CCO)。其次,我们得出了鲁棒内核CCO和标准内核CCA的IF。使用标准内核CCA的IF,我们可以从两组数据中检测有影响的观察结果。最后,我们提出了一种基于鲁棒内核CO和鲁棒内核CCO的方法,称为>鲁棒内核CCA ,该方法对噪声的敏感性低于标准内核CCA。引入的原理也可以应用于涉及内核CO或内核CCO的许多其他内核方法。我们对合成遗传数据和成像遗传数据的实验表明,建议的标准内核CCA的IF可以识别异常值。还可以看出,与标准内核CCA相比,所提出的鲁棒内核CCA方法对于理想和受污染的数据表现更好。

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