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Online Classification Algorithm for Data Streams Based on Fast Iterative Kernel Principal Component Analysis

机译:基于快速迭代内核主成分分析的数据流的在线分类算法

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Several dimensionality-reduction techniques based on component analysis (CA) have been suggested for various data stream classification tasks and allow fast approximation. The variations of CA, such as PCA, KPCA and ICA, however, have limited dimensionality-reduction ability because of their high complexity or linear transformation scheme, etc. This paper proposes a fast iterative kernel principal component analysis algorithm: FIKDR, which non-linearly, iteratively extracts the kernel principal components with only linear order computation and storage complexity per iteration. On the basis of FIKDR, this paper proposes an online classification algorithm for data stream: FIKOCFrame. The convergence analysis confirms the validity of FIKDR and extensive experiments confirm the superiority of FIKOCFrame over recent classification schemes based on CA.
机译:已经提出了基于组件分析(CA)的几种维度减少技术,用于各种数据流分类任务,并允许快速近似。然而,诸如PCA,KPCA和ICA的CA的变化具有有限的维度降低能力,因为它们具有高复杂性或线性变换方案等。本文提出了一种快速迭代的内核主成分分析算法:FIKDR,非线性地,迭代地提取内核主体组件,仅具有每次迭代的线性阶计算和存储复杂性。在FIKDR的基础上,本文提出了一种用于数据流的在线分类算法:Fikocframe。收敛分析证实了FIKDR的有效性和广泛的实验证实了基于CA的最近分类方案的Fikocframe的优越性。

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