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Unsupervised and Semi-supervised Lagrangian Support Vector Machines with Polyhedral Perturbations

机译:无监督和半监督拉格朗日支持传染媒介机与多面体扰动

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-Support Vector Machines (SVMs) have been dominant learning techniques for more than ten years, and mostly applied to supervised learning problems. These years two-class unsupervised and semi-supervised classification algorithms based on Bounded C-SVMs, Bounded v-SVMs and Lagrangian SVMs (LSVMs) respectively, which are relaxed to Semi-definite Programming (SDP), get good classification results. These support vector methods implicitly assume that training data in the optimization problems to he known exactly. But in practice, the training data are usually subjected to measurement noise. Zhao et al proposed robust version to Bounded C-SVMs, Bounded v-SVMs and Lagrangian SVMs (LSVMs) respectively with perturbations in convex polyhedrons and ellipsoids. The region of perturbation in the methods mentioned above is not general, and there are many perturbations in non-convex regions in practice. Therefore we proposed unsupervised and semi-supervised classification problems based on Lagrangian Support Vector Machines with general polyhedral perturbations. But the problem has difficulty to compute, we will find its semi-definite relaxation that can approximate it well. Numerical results confirm the robustness of the proposed method.
机译:-Support向量机(SVM)一直是十多年的主导学习技巧,大多应用于监督学习问题。这些年来,基于有界C-SVMS,有界V-SVM和拉格朗日SVMS(LSVMS)的两类无监督和半监督分类算法分别放宽到半定编程(SDP),获得良好的分类结果。这些支持载体方法隐含地假设培训在优化问题中的训练数据到他所知。但在实践中,培训数据通常受到测量噪声。 Zhao等,分别在凸多面体和椭圆体中分别与涉及有界C-SVM,有界V-SVM和拉格朗日SVMS(LSVMS)的强大版本。上述方法中的扰动区域不是一般的,并且在实践中存在许多非凸区域的扰动。因此,我们提出了基于拉格朗日支持向量机的无监督和半监督分类问题,具有一般多面体扰动。但问题难以计算,我们会发现它的半明确放松,可以近似它。数值结果证实了所提出的方法的鲁棒性。

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