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Session-Based Fraud Detection in Online E-Commerce Transactions Using Recurrent Neural Networks

机译:使用递归神经网络的在线电子商务交易中基于会话的欺诈检测

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Transaction frauds impose serious threats onto e-commerce. We present CLUE, a novel deep-learning-based transaction fraud detection system we design and deploy at JD.com, one of the largest e-commerce platforms in China with over 220 million active users. CLUE captures detailed information on users' click actions using neural-network based embedding, and models sequences of such clicks using the recurrent neural network. Furthermore, CLUE provides application-specific design optimizations including imbalanced learning, real-time detection, and incremental model update. Using real production data for over eight months, we show that CLUE achieves over 3x improvement over the existing fraud detection approaches.
机译:交易欺诈对电子商务构成了严重威胁。我们将展示CLUE,这是我们在京东设计和部署的基于深度学习的新型交易欺诈检测系统,京东是中国最大的电子商务平台之一,活跃用户超过2.2亿。 CLUE使用基于神经网络的嵌入来捕获有关用户单击动作的详细信息,并使用循环神经网络对此类单击序列进行建模。此外,CLUE还提供了针对特定应用的设计优化,包括不平衡学习,实时检测和增量模型更新。使用超过八个月的实际生产数据,我们证明CLUE的性能比现有欺诈检测方法提高了3倍以上。

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