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A new training method for support vector machines: Clustering k-NN support vector machines

机译:支持向量机的一种新训练方法:聚类k-NN支持向量机

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For training of support vector machines (SVMs) efficiently, a new training algorithm, clustering k-NN (k-nearest neighbor) support vector machines (CKSVMs) based on a Gaussian function regulated locally is proposed. In order to reflect degree of training data point as a support vector the Gaussian function is used with k-nearest neighbor (k-NN) method and Euclidean Distance measure. To add local control property to the training algorithm, a simple clustering scheme is implemented before Gaussian functions are constructed for each cluster. In addition, probabilistic SVM outputs are used for extension from binary classification to multi-class classification in pairwise approach. This training algorithm is applied to three commonly used classification problems. Experimental results show that the CKSVM has more classification accuracy than standard multi-class LS-SVM, FLS-SVM and LS-SVM with k-NN method which is proposed in our previous study. In addition to this, the training algorithm highly improved efficiency of the SVM classifier via simple algorithm.
机译:为了有效地训练支持向量机(SVM),提出了一种新的训练算法,即基于局部调节的高斯函数对k-NN(k最近邻)支持向量机(CKSVM)进行聚类。为了将训练数据点的程度反映为支持向量,高斯函数与k最近邻(k-NN)方法和欧几里得距离度量一起使用。为了将局部控制属性添加到训练算法中,在为每个聚类构造高斯函数之前,实现了一种简单的聚类方案。此外,概率SVM输出用于以成对方式从二进制分类扩展到多分类。该训练算法应用于三个常用的分类问题。实验结果表明,基于k-NN方法的CKSVM比标准多类LS-SVM,FLS-SVM和LS-SVM具有更高的分类精度。除此之外,训练算法通过简单的算法极大地提高了SVM分类器的效率。

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