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Cost-Sensitive Support Vector Machine Using Randomized Dual Coordinate Descent Method for Big Class-Imbalanced Data Classification

机译:成本敏感的支持向量机,采用随机双坐标下降法进行大类别不平衡数据分类

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摘要

Cost-sensitive support vector machine is one of the most popular tools to deal with class-imbalanced problem such as fault diagnosis. However, such data appear with a huge number of examples as well as features. Aiming at class-imbalanced problem on big data, a cost-sensitive support vector machine using randomized dual coordinate descent method (CSVM-RDCD) is proposed in this paper. The solution of concerned subproblem at each iteration is derived in closed form and the computational cost is decreased through the accelerating strategy and cheap computation. The four constrained conditions of CSVM-RDCD are derived. Experimental results illustrate that the proposed method increases recognition rates of positive class and reduces average misclassification costs on real big class-imbalanced data.
机译:成本敏感的支持向量机是用于处理类不平衡问题(例如故障诊断)的最受欢迎的工具之一。但是,此类数据带有大量示例和功能。针对大数据的类不平衡问题,提出了一种使用随机双坐标下降法(CSVM-RDCD)的成本敏感的支持向量机。每次迭代所涉及的子问题的解决方案都是以封闭形式导出的,并且通过加速策略和廉价的计算来降低计算成本。推导了CSVM-RDCD的四个约束条件。实验结果表明,该方法提高了真实分类的识别率,并减少了真实的大分类不平衡数据的平均分类错误成本。

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