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A method for selective SVM integration based on cultural algorithm and negative correlation learning

机译:基于文化算法和负相关学习的选择性支持向量机集成方法

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摘要

In this paper, a method for selective SVM integration is introduced in order to improve the generalization performance of SVM, which is based on cultural algorithm and negative correlation learning. This method mainly includes four parts: independent sub-SVMs training by bootstrap technology, creating an adaptation function based on negative correlation learning, computing the optimal weight of SVM in the weighted average values, and SVM integration with the weighted value which is more than a given threshold value. In the experiments, this is an efficient and effective method to improve the generalization performance of SVM.
机译:为了提高支持向量机的泛化性能,本文提出了一种基于文化算法和负相关学习的选择性支持向量机集成方法。该方法主要包括四个部分:通过自举技术进行独立的子SVM训练,基于负相关学习创建适应函数,计算加权平均值中SVM的最佳权重以及加权值大于A的SVM集成。给定阈值。在实验中,这是一种提高SVM泛化性能的有效方法。

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