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Improved Deep Forest Mode for Detection of Fraudulent Online Transaction

机译:改进的深林模式,用于检测欺诈在线交易

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摘要

As the rapid development of online transactions, transaction frauds have also emerged seriously. The fraud strategies are characterized by specialization, industrialization, concealment and scenes. Anti-fraud technologies face many challenges under the trend of new situations. In this paper, aiming at sample imbalance and strong concealment of online transactions, we enhance the original deep forest framework to propose a deep forest-based online transaction fraud detection model. Based on the BaggingBalance method we propose, we establish a global sample imbalance processing mechanism to deal with the problem of sample imbalance. In addition, the autoencoder model is introduced into the detection model to enhance the representation learning ability. Via the three-month real online transactions data of a China's bank, the experimental results show that, evaluating by the metric of precision and recall rate, the proposed model has a beyond 10 % improvement compared to the random forest model, and a beyond 5 % improvement compared to the original deep forest model. Download data is not yet available.
机译:作为在线交易的快速发展,交易欺诈也认真出现。欺诈策略的特点是专业化,工业化,隐瞒和场景。反欺诈技术面临新情况趋势下的许多挑战。在本文中,针对样本不平衡和强烈隐瞒在线交易,我们加强了原始的深度森林框架,提出了深入的基于林的在线交易欺诈检测模型。基于我们提出的BaggingBalance方法,我们建立了一个全球样品不平衡处理机制,以处理样本不平衡的问题。此外,IOSEncoder模型被引入检测模型,以增强表示学习能力。通过中国银行的三个月真正的在线交易数据,实验结果表明,通过精度和召回率的指标评估,拟议模型与随机森林模型相比具有超过10%的改进,以及超过5与原始深林模型相比改进。下载数据尚不可用。

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