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An algorithm to cluster data for efficient classification of support vector machines

机译:一种用于对数据进行聚类以对支持向量机进行有效分类的算法

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摘要

Support vector machines (SVM) are widely applied to various classification problems. However, most SVM need lengthy computation time when faced with a large and complicated dataset. This research develops a clustering algorithm for efficient learning. The method mainly categorizes data into clusters, and finds critical data in clusters as a substitute for the original data to reduce the computational complexity. The computational experiments presented in this paper show that the clustering algorithm significantly advances SVM learning efficiency.
机译:支持向量机(SVM)被广泛应用于各种分类问题。但是,大多数SVM在面对庞大而复杂的数据集时都需要漫长的计算时间。本研究开发了一种用于高效学习的聚类算法。该方法主要将数据分类为聚类,并在聚类中找到关键数据以替代原始数据,以降低计算复杂度。本文提出的计算实验表明,聚类算法大大提高了SVM的学习效率。

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