An improved reduced support vector machine

Hong-wei Wang, Bo Kong, Xiying Zheng
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引用次数: 4

Abstract

The reduced support vector machine (RSVM) was proposed to overcome the computational difficulties as well as to reduce the model complexity in generating a nonlinear separating surface for a massive data set. However, it selects ‘support vectors’ randomly from the training set, this will effect the result. To overcome this shortcoming of RSVM, an improved RSVM algorithm is presented in this paper. First of all, we calculate the average of relative distance for each sample point in every class; and then use percentile to deal with unbalanced sample and remove the outliers form margin vectors, so the representative vectors as ‘support vectors’ were extracted; finally, we apply the RSVM on these representative vectors. Because we reduce the effect of unbalanced sample and outliers, and apply the representative vectors as ‘support vectors’, so the new algorithm improves the ability of RSVM to classify and the training speed of C-SVM .
一种改进的简化支持向量机
提出了简化支持向量机(RSVM),以克服在海量数据集上生成非线性分离曲面的计算困难和降低模型复杂度。但是,它从训练集中随机选择“支持向量”,这将影响结果。为了克服RSVM算法的这一缺点,本文提出了一种改进的RSVM算法。首先,我们计算每个类中每个样本点的相对距离的平均值;然后用百分位数对不平衡样本进行处理,去除边缘向量中的异常值,提取代表性向量作为“支持向量”;最后,我们将RSVM应用于这些代表性向量上。由于我们减少了不平衡样本和离群值的影响,并将代表性向量作为“支持向量”,因此新算法提高了RSVM的分类能力和C-SVM的训练速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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