模糊聚类多核支持向量机

Gong Cheng, X. Tong
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引用次数: 16

摘要

为了提高支持向量机的分类速度和准确率,提出了一种模糊聚类多核支持向量机算法。本文采用模糊聚类方法将训练数据集聚为若干类。通过引入有效聚类中心,将原始训练数据集的训练简化为有效聚类中心数据集的训练。从而减少训练时间,提高训练精度。同时,本文采用多核支持向量机代替传统的单核支持向量机进行运算,可以处理复杂的数据结构,有效地提高了训练精度。数值实验表明,与传统的多核支持向量机相比,模糊聚类多核支持向量机具有分类精度高、分类时间短的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Clustering Multiple Kernel Support Vector Machine
In order to improve the classification speed and accuracy of support vector machines, a fuzzy clustering multi-kernel support vector machine algorithm is proposed. In this paper, the fuzzy clustering method is used to cluster the training datasets into several clusters. By introducing effective clustering centers, the training of the original training datasets is simplified to the training of the effective clustering center datasets. So as to reduce the training time and improve the training accuracy. At the same time, this paper uses Multiple Kernel Support Vector Machine to replace the traditional single kernel support vector machine to carry on the operation, which can handle complex data structures and improve the training precision effectively. Numerical experiments show that the fuzzy clustering Multiple Kernel Support Vector Machine has the advantages of higher classification accuracy and shorter classification time than the traditional Multiple Kernel support vector machine.
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