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Efficient Implementation of Nonparallel Hyperplanes Classifier

机译:高效实施非平行超平面分类器

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摘要

In this paper, we proposed a novel nonparallel hyper planes classifier for binary classification, termed as NHC. Though this method can be in fact proved equivalent to an improved twin support vector machine (TWSVM), it has the incomparable advantages than existing TWSVMs. First, the optimization problems in NHC can be solved efficiently by successive over relaxation (SOR) without needing to compute the large inverse matrices before training as TWSVMs usually do, Second, kernel trick can be applied directly to NHC, which is superior to existing TWSVMs. Experimental results on lots of data sets show the efficiency of our method in both computation time and classification accuracy.
机译:在本文中,我们提出了一种用于二进制分类的新型非平行超平面分类器,称为NHC。 虽然这种方法实际上可以证明等于改进的双支持向量机(TWSVM),但它具有比现有TWSVMS的无与伦比的优点。 首先,通过在训练前连续放松(SOR),在训练之前连续的放松(SOR),可以有效地解决NHC中的优化问题,而不是在TWSVMS之前,核心技巧可以直接应用于NHC,这是优于现有TWMS的NHC 。 在许多数据集上的实验结果表明了我们在计算时间和分类准确性中的方法的效率。

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