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Density-based clustering and radial basis function modeling to generate credit card fraud scores

机译:基于密度的聚类和径向基函数建模以生成信用卡欺诈分数

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Historical information on credit card transactions can be used to generate a fraud score which can then be used to reduce credit card fraud. The report describes a fraud-nonfraud classification methodology using a radial basis function network (RBFN) with a density based clustering approach. The input data is transformed into the cardinal component space and clustering as well as RBFN modeling is done using a few cardinal components. The methodology has been tested on a fraud detection problem and the preliminary results obtained are satisfactory.
机译:有关信用卡交易的历史信息可用于生成欺诈评分,然后可将其用于减少信用卡欺诈。该报告描述了一种使用基于密度的聚类方法的径向基函数网络(RBFN)的欺诈-非欺诈分类方法。输入数据被转换到基本分量空间中,并使用一些基本分量进行聚类以及RBFN建模。该方法已针对欺诈检测问题进行了测试,获得的初步结果令人满意。

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