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Support vector machines for multi-class signal classification with unbalanced samples

机译:支持向量机,用于不平衡样本的多类信号分类

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Support vector machines (SVMs) were originally developed for binary classification. To extend it to multi-class pattern recognition, one popular approach is to consider the problem as a collection of binary classification problems, so that each of them may be solved by a binary SVM. However, there is no guarantee that these SVMs will achieve the optimal solution even though each individual binary SVM is well trained. In this paper, we propose a method to optimize the multi-class SVMs by adjusting the penalty parameters using a genetic algorithm (GA). The method is applied to an acoustic signal classification problem with very promising results.
机译:支持向量机(SVM)最初是为二进制分类而开发的。为了将其扩展到多类模式识别,一种流行的方法是将该问题视为二进制分类问题的集合,以便每个问题都可以通过二进制SVM解决。但是,即使每个单独的二进制SVM受过良好训练,也无法保证这些SVM将获得最佳解决方案。在本文中,我们提出了一种通过使用遗传算法(GA)调整惩罚参数来优化多类SVM的方法。该方法应用于声学信号分类问题,具有很好的前景。

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