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Classification of Imbalanced Auction Fraud Data

机译:不平衡拍卖欺诈数据的分类

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Online auctioning has attracted serious fraud given the huge amount of money involved and anonymity of users. In the auction fraud detection domain, the class imbalance, which means less fraud instances are present in bidding transactions, negatively impacts the classification performance because the latter is biased towards the majority class i.e. normal bidding behavior. The best-designed approach to handle the imbalanced learning problem is data sampling that was found to improve the classification efficiency. In this study, we utilize a hybrid method of data over-sampling and under-sampling to be more effective in addressing the issue of highly imbalanced auction fraud datasets. We deploy a set of well-known binary classifiers to understand how the class imbalance affects the classification results. We choose the most relevant performance metrics to deal with both imbalanced data and fraud bidding data.
机译:鉴于涉及的巨额资金和用户的匿名性,在线拍卖吸引了严重的欺诈行为。在拍卖欺诈检测域中,类别不平衡,这意味着在投标交易中存在较少的欺诈实例,这对分类性能产生负面影响,因为分类性能偏向多数类别,即正常的投标行为。处理不平衡学习问题的最佳设计方法是发现数据采样,以提高分类效率。在这项研究中,我们利用数据过采样和欠采样的混合方法来更有效地解决高度不平衡的拍卖欺诈数据集的问题。我们部署了一组众所周知的二进制分类器,以了解类不平衡如何影响分类结果。我们选择最相关的效果指标来处理不平衡数据和欺诈出价数据。

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