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Performance Evaluation of SVM Based Semi-supervised Classification Algorithm

机译:基于SVM的半监督分类算法性能评估

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To construct decision boundaries for two-class classification, SVM approach is attractive due to its efficiency. However, this approach is useful for 2-class classification and when the classes (labels) for the data are known. In practice, we have collection of labeled as well as unlabelled data, and it gives rise to semi-supervised classification problem. In this paper, we give a semi-supervised classification algorithm based on support vector machine (SVM). Novel feature of our approach is the formulation of spherical decision boundaries and the exploitation of the dynamical system associated with support function to obtain the number of clusters. The experimental results on a few well-known datasets, namely, Iris dataset, Shuttle landing control dataset, Wisconsin Breast cancer dataset, glass dataset, and balance scale dataset, indicate that our approach results in satisfactory classification as well as generalization accuracy.
机译:为了构建两类分类的决策边界,SVM方法由于其效率而具有吸引力。然而,这种方法对于2级分类是有用的,并且当数据的类(标签)是已知的。在实践中,我们有标签的和未标签的数据集合,它会产生半监督分类问题。在本文中,我们提供了一种基于支持向量机(SVM)的半监督分类算法。我们的方法的新颖特征是对球面决策边界的制定以及与支持功能相关的动态系统的开发,以获得簇的数量。在一些众所周知的数据集中的实验结果,即虹膜数据集,班车登陆控制数据集,威斯康星州乳腺癌数据集,玻璃数据集和平衡标准数据集表明我们的方法会令人满意的分类以及概括的准确性。

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