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SVM-Based Cost-sensitive Classification Algorithm with Error Cost and Class-dependent Reject Cost

机译:基于SVM的成本敏感分类算法,具有错误成本和类依赖性抑制成本

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摘要

In such real data mining applications as medical diagnosis, fraud detection and fault classification, and so on, the two problems that the error cost is expensive and the reject cost is class-dependent are often encountered. In order to overcome those problems, firstly, the general mathematical description of the Binary Classification Problem with Error Cost and Class-dependent Reject Cost (BCP-EC2RC) is proposed. Secondly, as one of implementation methods of BCP-EC2RC, the new algorithm, named as Cost-sensitive Support Vector Machines with the Error Cost and the Class-dependent Reject Cost (CSVM-EC2RC), is presented. The CSVM-EC2RC algorithm involves two stages: estimating the classification reliability based on trained SVM classifier, and determining the optimal reject rate of positive class and negative class by minimizing the average cost based on the given error cost and class-dependent reject cost. The experiment studies based on a benchmark data set illustrate that the proposed algorithm is effective.
机译:在这种真实数据挖掘应用中,欺诈检测和故障分类等,误差成本昂​​贵的两个问题且丢弃成本通常依赖于类。为了克服这些问题,首先,提出了具有错误成本和依赖类拒绝成本(BCP-EC2RC)的二进制分类问题的一般数学描述。其次,作为BCP-EC2RC的实现方法之一,呈现了具有错误成本的成本敏感支持向量机的新算法和依赖于类抑制成本(CSVM-EC2RC)。 CSVM-EC2RC算法涉及两个阶段:基于训练的SVM分类器估计分类可靠性,并通过基于给定的错误成本和类相关的抑制成本最小化平均成本来确定正类和负类的最佳抑制率。基于基准数据集的实验研究说明了所提出的算法是有效的。

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