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Twin support vector machine based on adjustable large margin distribution for pattern classification

机译:基于可调节大边缘分布的双支持向量机模式分类

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摘要

This paper researches the value of the margin distribution in binary classifier. The central idea of large margin distribution machine (LDM) is to optimize the margin distribution, such as maximizing the margin mean and minimizing the margin variance. Compared to support vector machine (SVM), LDM demonstrates the good generalization performance. In order to improve the generalization performance of twin support vector machine (TSVM), a twin support vector machine based on adjustable large margin distribution (ALD-TSVM) is proposed in this paper. Firstly, the margin distribution is redefined to construct a pair of adjustable supporting hyperplanes. Then, the redefined margin distribution is introduced onto TSVM to obtain the models of ALD-TSVM, including linear case and nonlinear case. ALD-TSVM is a general learning method which can be used in any place where TSVM and LDM can be applied. Finally, the novel method is compared with other classification algorithms by doing experiments on toy dataset, UCI datasets and image datasets. The experimental results show that ALD-TSVM obtains better classification performance.
机译:本文研究了二进制分类器中的边缘分布的价值。大型边缘分配机(LDM)的核心思想是优化边缘分布,例如最大化边缘平均值并最小化边缘方差。与支持向量机(SVM)相比,LDM展示了良好的泛化性能。为了提高双支撑载体机(TSVM)的泛化性能,本文提出了一种基于可调节的大边缘分布(ALD-TSVM)的双支撑矢量机。首先,重新定义边缘分布以构建一对可调支撑超平面。然后,将重新定义的边缘分布引入TSVM,以获得ALD-TSVM的型号,包括线性情况和非线性情况。 ALD-TSVM是一种一般学习方法,可在可以应用TSVM和LDM的任何地方使用。最后,通过在玩具数据集,UCI数据集和图像数据集上进行实验,将新方法与其他分类算法进行比较。实验结果表明,ALD-TSVM获得了更好的分类性能。

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