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A HYBRID SVM BASED ON NEAREST NEIGHBOR RULE

机译:基于近邻规则的混合SVM

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摘要

This paper proposes a hybrid learning method to speed up the classification procedure of Support Vector Machines (SVM). Comparing most algorithms trying to decrease the support vectors in an SVM classifier, we focus on reducing the data points that need SVM for classification, and reduce the number of support vectors for each SVM classification. The system uses a Nearest Neighbor Classifier (NNC) to treat data points attentively. In the training phase, the NNC selects data near partial decision boundary, and then trains sub SVM for each Voronoi pair. For classification, most non-boundary data points are classified by NNC directly, while remaining boundary data points are passed to a corresponding local expert SVM. We also propose a data selection method for training reliable expert SVM. Experimental results on several generated and public machine learning data sets show that the proposed method significantly accelerates the testing speed.
机译:本文提出了一种混合学习方法来加快支持向量机(SVM)的分类过程。比较大多数尝试减少SVM分类器中支持向量的算法,我们专注于减少需要SVM进行分类的数据点,并减少每种SVM分类的支持向量的数量。该系统使用最近邻居分类器(NNC)来专心处理数据点。在训练阶段,NNC选择接近部分决策边界的数据,然后为每个Voronoi对训练sub SVM。对于分类,NNC直接对大多数非边界数据点进行分类,而其余边界数据点则传递给相应的本地专家SVM。我们还提出了一种用于训练可靠的专家SVM的数据选择方法。在多个生成的公共机器学习数据集上的实验结果表明,该方法大大提高了测试速度。

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