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Greedy kernel PCA for training data reduction and nonlinear feature extraction in classification

机译:贪心内核PCA用于分类中的训练数据约简和非线性特征提取

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The aim of this paper applies greedy kernel principal component analysis (greedy kernel PCA) to deal with training data reduction and nonlinear feature extraction in classification. Kernel PCA is a nonlinear extension of linear PCA. It shows a powerful nonlinear feature extraction technique via kernel trick. A disadvantage of kernel PCA, however, is that the storage of training data in terms of the dot products is too expensive since the size of kernel matrix increases quadratically with the number of training data. So, a more efficient feature extraction method, greedy kernel PCA, is proposed to reduce training data and nonlinear feature extraction for classification. The reduced set method aims to find a new kernel expansion and well approximates the original training data. Simulation results show both kernel PCA and greedy kernel PCA are more superior to linear PCA in feature extraction. Greedy kernel PCA will tend towards kernel PCA feature extraction as more percentage of training data is included in the reduced set, whilst greedy kernel PCA results in lower evaluation cost due to the reduced training set. The experiments show also that greedy kernel PCA can significantly reduce the complexity while retaining their accuracy in classification.
机译:本文的目的是将贪心核主成分分析(贪心核PCA)用于分类中的训练数据约简和非线性特征提取。内核PCA是线性PCA的非线性扩展。它显示了通过内核技巧的强大非线性特征提取技术。但是,内核PCA的一个缺点是,以点积表示的训练数据的存储太昂贵了,因为内核矩阵的大小随训练数据的数量呈二次方增加。因此,提出了一种更有效的特征提取方法贪心核PCA,以减少训练数据和非线性特征提取以进行分类。缩减集方法旨在找到新的内核扩展并很好地近似原始训练数据。仿真结果表明,在特征提取中,内核PCA和贪婪内核PCA均优于线性PCA。贪婪的内核PCA将趋向于内核PCA特征提取,因为精简集合中包含了更多百分比的训练数据,而贪婪的内核PCA由于减少了训练集而导致了较低的评估成本。实验还表明,贪婪的内核PCA可以显着降低复杂度,同时又可以保持分类的准确性。

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