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首页> 外文期刊>Malaysian Journal of Computer Science >Near-Boundary Data Selection for Fast Suppor Vector Machines
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Near-Boundary Data Selection for Fast Suppor Vector Machines

机译:快速支持向量机的近边界数据选择

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Support Vector Machines(SVMs) have become more popular than other algorithms for pattern classification. The learning phase of a SVM involves exploring the subset of informative training examples (i.e. support vectors) that makes up a decision boundary. Those support vectors tend to lie close to the learned boundary. In view of nearest neighbor property, the neighbors of a support vector become more heterogeneous than those of a non-support vector. In this paper, we propose a data selection method that is based on the geometrical analysis of the relationship between nearest neighbors and boundary examples. With real-world problems, we evaluate the proposed data selection method in terms of generalization performance, data reduction rate, training time and the number of support vectors. The results show that the proposed method achieves a drastic reduction of both training data size and training time without significant impairment to generalization performance compared to the standard SVM.
机译:支持向量机(SVM)比其他用于模式分类的算法更受欢迎。 SVM的学习阶段涉及探索组成决策边界的信息培训示例的子集(即支持向量)。这些支持向量倾向于靠近学习的边界。考虑到最近邻居的性质,支持向量的邻居比非支持向量的邻居更加异构。在本文中,我们提出了一种数据选择方法,该方法基于对最近邻和边界实例之间的关系进行几何分析。面对实际问题,我们从泛化性能,数据缩减率,训练时间和支持向量数量的角度评估提出的数据选择方法。结果表明,与标准SVM相比,该方法可以显着减少训练数据量和训练时间,而不会显着降低泛化性能。

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