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Gmm-Based Undersampling And Its Application For Credit Card Fraud Detection

Fengjun Zhang,Guanjun Liu, Zhenchuan Li,Chungang Yan,Changjun Jiang

2019 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN)(2019)

引用 41|浏览55
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摘要
The class imbalance problem exists in many real-world applications such as fraud detection, medical diagnosis and spam filtering, and seriously influences the performance of learning algorithms. Randomly undersampling is a famous method to solve the problem. However, it cannot well extract the samples nearby the cross-edge of majority and minority classes due to its randomness, while these samples are very important for a classifier since they influence the classification performance. In this paper, we propose a novel Gaussian Mixture Undersampling (GMUS for short). GMUS mainly contains three steps. Firstly, a Gaussian Mixture Model (GMM) is applied to fit the majority samples. Secondly, considering the probability density function (PDF) of predicted minority samples on the well-fitted GMM, the maximum of PDF is selected as the cross-edge of two classes. Finally, we undersample the majority samples near the cross-edge. We do experiments on 16 public datasets and the results demonstrate that GMUS can sample more informative instances and thus improve the performance of classifiers compared with the state-of-the-art undersampling methods. We also apply GMUS to the credit card fraud detection and obtain a good performance.
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关键词
credit card fraud detection,class imbalance problem,medical diagnosis,spam filtering,learning algorithms,cross-edge,minority classes,classifier,classification performance,GMUS,Gaussian Mixture Model,majority samples,probability density function,PDF,predicted minority samples,GMM-based undersampling,Gaussian mixture undersampling
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