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KNN-based least squares twin support vector machine for pattern classification

机译:基于KNN的最小二乘双重支持矢量机,用于模式分类

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摘要

The least squares twin support vector machine (LSTSVM) generates two non-parallel hyperplanes by directly solving a pair of linear equations as opposed to solving two quadratic programming problems (QPPs) in the conventional twin support vector machine (TSVM), which makes learning speed of LSTSVM faster than that of the TSVM. However, LSTSVM fails to discover underlying similarity information within samples which may be important for classification performance. To address the above problem, we apply the similarity information of samples into LSTSVM to build a novel non-parallel plane classifier, called K-nearest neighbor based least squares twin support vector machine (KNN-LSTSVM). The proposed method not only retains the superior advantage of LSTSVM which is simple and fast algorithm but also incorporates the inter-class and intra-class graphs into the model to improve classification accuracy and generalization ability. The experimental results on several synthetic as well as benchmark datasets demonstrate the efficiency of our proposed method. Finally, we further went on to investigate the effectiveness of our classifier for human action recognition application.
机译:最小二乘双支持向量机(LSTSVM)通过直接求解一对线性方程,而不是在传统的双支持向量机(TSVM)中求解两个二次编程问题(QPP),这使得一对线性方程来产生两个非并行的超平面。 LSTSVM比TSVM更快。但是,LSTSVM无法发现样本内的底层相似性信息,这对于分类性能很重要。为了解决上述问题,我们将样本的相似性信息应用于LSTSVM以构建一种新的非平行平面分类器,称为K-Collect邻居的最小二乘支持向量机(KNN-LSTSVM)。所提出的方法不仅保留了LSTSVM的优越优势,这是简单且快速算法,而且还将级别的级别和帧内图形集成到模型中以提高分类精度和泛化能力。实验结果对几种合成和基准数据集表明了我们提出的方法的效率。最后,我们进一步继续调查我们对人类行动识别申请的分类器的有效性。

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