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The Impact of False Negative Cost on the Performance of Cost Sensitive Learning Based on Bayes Minimum Risk: A Case Study in Detecting Fraudulent Transactions

机译:基于贝叶斯最小风险的假负成本对成本敏感学习绩效的影响:以欺诈交易为例

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In this paper, we present a new investigation to the literature, where we study the impact of false negative (FN) cost on the performance of cost sensitive learning. The proposed investigation approach has been performed on cost sensitive classifiers developed using Bayes minimum risk as an example of an applied mechanism for making a classifier cost sensitive. We consider a case study in credit card fraud detection, where FN refers to the number of fraudulent transactions that are miss-detected and approved as legitimate ones, assuming the classifier predicts the fraudulent transaction. Our investigation approach relies on testing the performance of various complex cost sensitive classifiers from different categories developed using Bayes minimum risk at different costs of FN. Our results show that those classifiers behave differently at different costs of FN including the real and average amount of transaction, and a range of random constant costs that are greater or less than the average amount. However, in general the results show that the lower the costs of FN are, the better the classifier performances are. This leads to different conclusions from the one drown in [1], which states that choosing the cost of FN to be equal to the amount of transaction leads to better performance of cost sensitive learning using Bayes minimum risk. The results of this paper are based on the real life anonymous and imbalanced UCSD transactional data set.
机译:在本文中,我们向文献提出了一项新的研究,其中我们研究了假阴性(FN)成本对成本敏感型学习的影响。拟议的调查方法已针对使用贝叶斯最小风险开发的成本敏感分类器执行,该方法以使分类器成本敏感的应用机制为例。我们考虑信用卡欺诈检测中的一个案例研究,其中FN表示被误检测并被批准为合法交易的欺诈交易的数量,假设分类器预测欺诈交易。我们的调查方法依赖于测试不同复杂成本敏感分类器的性能,这些分类器是在不同成本的FN下使用贝叶斯最小风险开发的。我们的结果表明,这些分类器在不同的FN成本(包括实际和平均交易金额)以及一系列大于或小于平均金额的随机不变成本下的行为有所不同。但是,总的来说,结果表明FN的成本越低,分类器的性能就越好。这导致与[1]中被淹死的结论不同,该结论指出,选择FN的成本等于交易量会导致使用贝叶斯最小风险的成本敏感型学习的更好性能。本文的结果基于现实生活中的匿名和不平衡UCSD事务数据集。

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