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Large data sets classification using convex-concave hull and support vector machine

机译:使用凸凹壳和支持向量机的大数据集分类

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Normal support vector machine (SVM) is not suitable for classification of large data sets because of high training complexity. Convex hull can simplify the SVM training. However, the classification accuracy becomes lower when there exist inseparable points. This paper introduces a novel method for SVM classification, called convex-concave hull SVM (CCH-SVM). After grid processing, the convex hull is used to find extreme points. Then, we use Jarvis march method to determine the concave (non-convex) hull for the inseparable points. Finally, the vertices of the convex-concave hull are applied for SVM training. The proposed CCH-SVM classifier has distinctive advantages on dealing with large data sets. We apply the proposed method on several benchmark problems. Experimental results demonstrate that our approach has good classification accuracy while the training is significantly faster than other SVM classifiers. Compared with the other convex hull SVM methods, the classification accuracy is higher.
机译:由于训练复杂度高,普通支持向量机(SVM)不适合用于大型数据集的分类。凸包可以简化SVM训练。但是,当存在不可分割的点时,分类精度变低。本文介绍了一种新的SVM分类方法,称为凸凹壳SVM(CCH-SVM)。经过网格处理后,凸包用于查找极限点。然后,我们使用Jarvis进行方法来确定不可分离点的凹形(非凸形)船体。最后,将凸凹壳体的顶点应用于SVM训练。提出的CCH-SVM分类器在处理大型数据集方面具有明显的优势。我们将提出的方法应用于几个基准问题。实验结果表明,我们的方法具有良好的分类精度,而训练速度明显快于其他SVM分类器。与其他凸包支持向量机方法相比,分类精度更高。

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