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AN ITERATIVE ALGORITHM FOR ROBUST KERNEL PRINCIPAL COMPONENT ANALYSIS

机译:鲁棒核主成分分析的迭代算法

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Principal Component Analysis (PCA) has been proven to be an efficient method in dimensionality reduction, feature extraction and pattern recognition.Kernel Principal Component Analysis (KPCA) can be considered as a natural nonlinear generalization of PCA, which performs linear PCA in a high dimensional space implicitly by using kernel trick.However, both conventional PCA and KPCA suffer from the deficiency of being sensitive to outliers.Existing robust KPCA has to eigen-decompose the Gram matrix directly in each step and is much more computationally infeasible due to the large size of the matrix when the number of training samples is large.By extending existing robust PCA algorithm using kernel methods, we present a novel robust adaptive algorithm for calculating the kernel principal components.The proposed method not only preserves the characteristic of capturing underlying nonlinear structure of KPCA but also is robust against outliers by restraining the effect of outlying samples.Compared with existing robust KPCA methods, our method is performed without having to store the kernel matrix, which can reduce significantly the storage burden.In addition, our method shows the potential of expansibility to the incremental learning version.Experimental results on synthetic data indicate that our improved algorithm is effective and promising.
机译:主成分分析(PCA)已被证明是一种有效的降维,特征提取和模式识别方法。传统的PCA和KPCA都缺乏对离群值敏感的缺点,而现有的鲁棒KPCA必须在每一步中直接对Gram矩阵进行特征分解,并且由于其较大的尺寸而在计算上不可行通过使用核方法扩展现有的鲁棒PCA算法,我们提出了一种新颖的鲁棒自适应算法来计算核主成分。提出的方法不仅保留了捕获基本非线性结构的特征。 KPCA还能通过限制外围样本的影响来抵抗异常值。与现有健壮的KPCA方法相比,该方法无需存储内核矩阵即可执行,从而可以显着减少存储负担。此外,我们的方法还显示了可扩展至增量学习版本的潜力。综合数据的实验结果表明:我们改进的算法是有效且有前途的。

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