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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An efficient weighted Lagrangian twin support vector machine for imbalanced data classification
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An efficient weighted Lagrangian twin support vector machine for imbalanced data classification

机译:用于不平衡数据分类的高效加权拉格朗日双支持向量机

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摘要

In this paper, we propose an efficient weighted Lagrangian twin support vector machine (WLTSVM) for the imbalanced data classification based on using different training points for constructing the two proximal hyperplanes. The main contributions of our WLTSVM are: (1) a graph based under-sampling strategy is introduced to keep the proximity information, which is robustness to outliers, (2) the weight biases are embedded in the Lagrangian TWSVM formulations, which overcomes the bias phenomenon in the original TWSVM for the imbalanced data classification, (3) the convergence of the training procedure of Lagrangian functions is proven and (4) it is tested and compared with some other TWSVMs on synthetic and real datasets to show its feasibility and efficiency for the imbalanced data classification.
机译:在本文中,我们提出了一种有效的加权拉格朗日双支持向量机(WLTSVM),用于基于使用不同训练点构造两个近端超平面的不平衡数据分类。我们的WLTSVM的主要贡献是:(1)引入了基于图的欠采样策略以保持邻近信息,这对异常值具有鲁棒性;(2)拉格朗日TWSVM公式中嵌入了权重偏差,从而克服了偏差原始TWSVM中用于不平衡数据分类的现象,(3)证明了拉格朗日函数训练过程的收敛性,(4)经过测试并将其与其他和真实数据集上的其他TWSVM进行比较,以证明其可行性和有效性不平衡的数据分类。

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