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An Improved TA-SVM Method Without Matrix Inversion and Its Fast Implementation for Nonstationary Datasets

机译:改进的不支持矩阵求逆的TA-SVM方法及其对非平稳数据集的快速实现

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摘要

Recently, a time-adaptive support vector machine (TA-SVM) is proposed for handling nonstationary datasets. While attractive performance has been reported and the new classifier is distinctive in simultaneously solving several SVM subclassifiers locally and globally by using an elegant SVM formulation in an alternative kernel space, the coupling of subclassifiers brings in the computation of matrix inversion, thus resulting to suffer from high computational burden in large nonstationary dataset applications. To overcome this shortcoming, an improved TA-SVM (ITA-SVM) is proposed using a common vector shared by all the SVM subclassifiers involved. ITA-SVM not only keeps an SVM formulation, but also avoids the computation of matrix inversion. Thus, we can realize its fast version, that is, improved time-adaptive core vector machine (ITA-CVM) for large nonstationary datasets by using the CVM technique. ITA-CVM has the merit of asymptotic linear time complexity for large nonstationary datasets as well as inherits the advantage of TA-SVM. The effectiveness of the proposed classifiers ITA-SVM and ITA-CVM is also experimentally confirmed.
机译:最近,提出了一种时间自适应支持向量机(TA-SVM)来处理非平稳数据集。虽然已经报道了诱人的性能,并且新的分类器在通过在替代内核空间中使用优雅的SVM公式同时局部和全局解决多个SVM子分类器方面具有独特性,但子分类器的耦合带来了矩阵求逆的计算,因此导致遭受大型非平稳数据集应用程序中的高计算负担。为克服此缺点,提出了一种改进的TA-SVM(ITA-SVM),该方法使用了所涉及的所有SVM子分类器共享的公共向量。 ITA-SVM不仅保留SVM公式,而且避免了矩阵求逆的计算。因此,我们可以使用CVM技术实现其快速版本,即针对大型非平稳数据集的改进的时间自适应核心向量机(ITA-CVM)。对于大型非平稳数据集,ITA-CVM具有渐近线性时间复杂度的优点,并且继承了TA-SVM的优势。通过实验也证实了所提出的分类器ITA-SVM和ITA-CVM的有效性。

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