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Credit Card Fraud Detection Using Non-Overlapped Risk Based Bagging Ensemble (NRBE)

机译:使用基于风险的不重叠袋式集成(NRBE)进行信用卡欺诈检测

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Fraud due to credit card misuse costs consumers several billions of dollars annually. This is due to the huge usage levels and inability of the systems to automatically detect the anomalies. This paper analyzes the implicit nature of data with noise and imbalance and proposes a Non-overlapped Risk based Bagged Ensemble model (NRBE) to handle imbalance and noise contained in the credit card transactions. The bagging model has been enhanced in terms of a novel bag creation model and an effective risk based base learner. Non-overlapped bag creation generates training subsets to handle data imbalance and the risk based Naïve Bayes eliminates the issues arising due to noise. Experiments were conducted and comparisons were performed with existing state-of-the-art fraud detection models, which indicates that NRBE exhibits improved performances of 5% in terms of BCR and BER, 50% in terms of Recall and 2X to 2.5X times reduced cost.
机译:信用卡滥用造成的欺诈每年使消费者损失数十亿美元。这是由于巨大的使用水平以及系统无法自动检测异常。本文分析了带有噪声和不平衡的数据的隐含性质,并提出了一种基于非重叠风险的袋装集成模型(NRBE)来处理信用卡交易中包含的不平衡和噪声。套袋模型在新颖的袋创建模型和有效的基于风险的基础学习者方面得到了增强。不重叠的袋子创建会生成训练子集,以处理数据不平衡,基于风险的朴素贝叶斯(NaïveBayes)消除了由于噪声引起的问题。进行了实验并与现有的最新欺诈检测模型进行了比较,这表明NRBE的BCR和BER性能提高了5%,召回率提高了50%,而性能降低了2倍至2.5倍成本。

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