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A Robust Weighted Kernel Principal Component Analysis Algorithm

机译:鲁棒加权核主成分分析算法

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摘要

Kernel principal component analysis (KPCA) fails to detect the nonlinear structure of data well when outliers exist. To reduce this problem, this paper presents a novel algorithm, named robust weighted KPCA (RWKPCA). RWKPCA works well in dealing with outliers, and can be carried out in an iterative manner. This algorithm gives the weighted means vector and weighted covariance matrix based on M-estimator in robust statistics, then the weight on each datum can be got by an iterative computing and the outliers can be exterminated by the weights. The RWKPCA algorithm not only remains non-linearity property of KPCA but gets better robustness and improves the accuracy of KPCA. The simulation experiments show that the RWKPCA algorithm developed is better than the KPCA algorithm.
机译:存在异常值时,内核主成分分析(KPCA)无法很好地检测数据的非线性结构。为了减少这个问题,本文提出了一种新颖的算法,称为鲁棒加权KPCA(RWKPCA)。 RWKPCA在处理异常值方面效果很好,并且可以迭代方式执行。该算法在鲁棒统计中给出了基于M估计的加权均值向量和加权协方差矩阵,然后可以通过迭代计算获得每个数据的权重,并用权重消除异常值。 RWKPCA算法不仅保留了KPCA的非线性特性,而且具有更好的鲁棒性并提高了KPCA的精度。仿真实验表明,所开发的RWKPCA算法优于KPCA算法。

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