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A New Method to Construct Reduced Vector Sets for Simplifying Support Vector Machines

机译:一种构造简化向量集以简化支持向量机的新方法

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Support vector machines (SVM) are well known to give good results on pattern recognition problems, but for large scale problems, they exhibit substantially slower classification speeds than neural networks. It has been proposed to speed the SVM classification by approximating the decision function of SVM with a reduced vector set. A new method to construct the reduced vector set is proposed in this paper, which is constructed by merging the closest support vectors in an iterative fashion. A minor modification on the proposed method also has been made in order to simplify the decision function of reduced support vector machines (RSVM). The proposed method was compared with previous study on several benchmark data sets, and the computational results indicated that our method could simplify SVMs and RSVMs effectively, which will speed the classification for large scale problems.
机译:众所周知,支持向量机(SVM)在模式识别问题上能给出良好的结果,但是对于大规模问题,它们表现出比神经网络慢得多的分类速度。已经提出了通过用减少的向量集逼近SVM的决策函数来加速SVM分类的方法。本文提出了一种构造约简向量集的新方法,该方法是通过迭代合并最接近的支持向量来构造的。为了简化简化支持向量机(RSVM)的决策功能,还对建议的方法进行了较小的修改。将该方法与先前在几个基准数据集上的研究进行了比较,计算结果表明我们的方法可以有效地简化SVM和RSVM,从而加快了大规模问题的分类速度。

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