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Manifold proximal support vector machine for semi-supervised classification

机译:用于半监督分类的歧管近端支持向量机

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摘要

Recently, semi-supervised learning (SSL) has attracted a great deal of attention in the machine learning community. Under SSL, large amounts of unlabeled data are used to assist the learning procedure to construct a more reasonable classifier. In this paper, we propose a novel manifold proximal support vector machine (MPSVM) for semisupervised classification. By introducing discriminant information in the manifold regularization (MR), MPSVM not only introduces MR terms to capture as much geometric information as possible from inside the data, but also utilizes the maximum distance criterion to characterize the discrepancy between different classes, leading to the solution of a pair of eigenvalue problems. In addition, an efficient particle swarm optimization (PSO)-based model selection approach is suggested for MPSVM. Experimental results on several artificial as well as real-world datasets demonstrate that MPSVM obtains significantly better performance than supervised GEPSVM, and achieves comparable or better performance than LapSVM and LapTSVM, with better learning efficiency.
机译:最近,半监督学习(SSL)在机器学习社区中引起了很多关注。在SSL下,大量未标记的数据用于协助学习过程来构建更合理的分类器。在本文中,我们提出了一种用于半监督分类的新型歧管近端支持向量机(MPSVM)。通过在流形正则化(MR)中引入区分信息,MPSVM不仅引入MR项以从数据内部捕获尽可能多的几何信息,而且利用最大距离准则来表征不同类别之间的差异,从而得出解决方案对特征值问题。此外,针对MPSVM,提出了一种基于有效粒子群优化(PSO)的模型选择方法。在多个人工数据集和真实数据集上的实验结果表明,MPSVM的性能明显优于监督GEPSVM,并且与LapSVM和LapTSVM相比具有可比或更高的性能,并且学习效率更高。

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