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Learning with progressive transductive support vector machine

机译:用渐进式支持向量机学习

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摘要

Support vector machine (SVM) is a new learning method developed in recent years based on the foundations of statistical learning theory. By taking a transductive approach instead of an inductive one in support vector classifiers, the working set can be used as an additional source of information about margins. Compared with traditional inductive support vector machines, transductive support vector machine is often more powerful and can give better performance. In transduction, one estimates the classification function at points within the working set using information from both the training and the working set data. This will help to improve the generalization performance of SVMs, especially when training data is inadequate. Intuitively, we would expect transductive learning to yield improvements when the training sets are small or when there is a significant deviation between the training and working set subsamples of the total population. In this paper, a progressive transductive support vector machine is addressed to extend Joachims' transductive SVM to handle different class distributions. It solves the problem of having to estimate the ratio of positiveegative examples from the working set. The experimental results show the algorithm is very promising.
机译:支持向量机(SVM)是近年来在统计学习理论的基础上发展起来的一种新的学习方法。通过在支持向量分类器中采用转导方法而不是归纳方法,工作集可以用作有关边距的其他信息源。与传统的感应式支持向量机相比,感应式支持向量机通常功能更强大并且性能更好。在转导中,人们使用训练和工作集数据中的信息来估计工作集内各个点的分类函数。这将有助于提高SVM的泛化性能,尤其是在训练数据不足时。凭直觉,当训练集较小或总人口的训练集和工作集子样本之间存在显着差异时,我们希望转导学习会有所改善。在本文中,提出了一种渐进的转导支持向量机,以扩展Joachims的转导SVM以处理不同的类别分布。它解决了必须从工作集中估计正例/负例之比的问题。实验结果表明该算法是很有前途的。

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