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A Method to Boost Support Vector Machines

机译:一种提高支持向量机的方法

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Combining boosting and Support Vector Machine (SVM) is proved to be beneficial, but it is too complex to be feasible. This paper introduces an efficient way to boost SVM. It embraces the idea of active learning to dynamically select "important" samples into training sample set for constructing base classifiers. This method maintains a small training sample set with settled size in order to control the complexity of each base classifier. Other than construct each base SVM classifier directly, it uses the training samples only for finding support vectors. This way to combine boosting and SVM is proved to be accurate and efficient by experimental results.
机译:事实证明,将提升和支持向量机(SVM)结合使用是有益的,但是它太复杂了而无法实现。本文介绍了一种增强SVM的有效方法。它包含主动学习的思想,可以动态地将“重要”样本选择到训练样本集中以构建基本分类器。为了控制每个基本分类器的复杂度,此方法维护了一个具有固定大小的小的训练样本集。除了直接构造每个基本SVM分类器外,它仅将训练样本用于查找支持向量。实验结果证明,这种将Boosting和SVM相结合的方法是准确有效的。

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