With the explosive growth of e-commerce, online transaction fraud has become one of the biggest challenges for e-commerce platforms. The historical behaviors of users provide rich information for digging into the users' fraud risk. While considerable efforts have been made in this direction, a long-standing challenge is how to effectively exploit internal user information and provide explainable prediction results. In fact, the value variations of same field from different events and the interactions of different fields inside one event have proven to be strong indicators for fraudulent behaviors. In this paper, we propose the Dual Importance-aware Factorization Machines (DIFM), which exploits the internal field information among users' behavior sequence from dual perspectives, i.e., field value variations and field interactions simultaneously for fraud detection. The proposed model is deployed in the risk management system of one of the world's largest e-commerce platforms, which utilize it to provide real-time transaction fraud detection. Experimental results on real industrial data from different regions in the platform clearly demonstrate that our model achieves significant improvements compared with various state-of-the-art baseline models. Moreover, the DIFM could also give an insight into the explanation of the prediction results from dual perspectives.
翻译:随着电子商务的爆炸性增长,网上交易欺诈已成为电子商务平台面临的最大挑战之一。用户的历史行为为挖掘用户的欺诈风险提供了丰富的信息。虽然在这方面已经做出了相当大的努力,但长期的挑战是如何有效地利用内部用户信息并提供可解释的预测结果。事实上,不同事件的不同领域和某一事件的不同领域之间的相互作用的价值差异证明是欺诈行为的有力指标。在本文件中,我们提议采用双重重要性因素计算机制(DIFM),它从双重角度利用用户行为顺序的内部实地信息,即实地价值变化和实地互动,同时侦查欺诈。拟议的模式被运用于世界上最大的电子商务平台之一的风险管理系统,利用这一平台提供实时交易欺诈检测。不同区域实际工业数据在平台上的实验结果清楚地表明,与各种最先进的基线模型相比,我们的模型取得了显著的改进。此外,DIFM还可以从双重角度对预测结果的解释作出深刻的解释。