With the explosive growth of the e-commerce industry, detecting online transaction fraud in real-world applications has become increasingly important to the development of e-commerce platforms. The sequential behavior history of users provides useful information in differentiating fraudulent payments from regular ones. Recently, some approaches have been proposed to solve this sequence-based fraud detection problem. However, these methods usually suffer from two problems: the prediction results are difficult to explain and the exploitation of the internal information of behaviors is insufficient. To tackle the above two problems, we propose a Hierarchical Explainable Network (HEN) to model users' behavior sequences, which could not only improve the performance of fraud detection but also make the inference process interpretable. Meanwhile, as e-commerce business expands to new domains, e.g., new countries or new markets, one major problem for modeling user behavior in fraud detection systems is the limitation of data collection, e.g., very few data/labels available. Thus, in this paper, we further propose a transfer framework to tackle the cross-domain fraud detection problem, which aims to transfer knowledge from existing domains (source domains) with enough and mature data to improve the performance in the new domain (target domain). Our proposed method is a general transfer framework that could not only be applied upon HEN but also various existing models in the Embedding & MLP paradigm. Based on 90 transfer task experiments, we also demonstrate that our transfer framework could not only contribute to the cross-domain fraud detection task with HEN, but also be universal and expandable for various existing models.
翻译:随着电子商务行业的爆炸性增长,在现实世界应用中发现在线交易欺诈对于电子商务平台的发展越来越重要。用户的连续行为史为区分欺诈性支付与定期支付提供了有用的信息。最近,提出了一些办法来解决基于序列的欺诈检测问题。然而,这些方法通常有两个问题:预测结果难以解释,对内部行为信息的利用不足。为了解决上述两个问题,我们提议建立一个等级可解释网络(HEN),用于模拟用户的行为序列,这不仅可以改进欺诈检测的绩效,还可以使推断过程可以解释。与此同时,随着电子商务业务扩展到新的领域,例如,新的国家或新市场,在欺诈检测系统中模拟用户行为的一个主要问题是数据收集的局限性,例如,很少有可用的数据/标签。因此,在本文中,我们进一步提议一个可转移框架,以解决交叉欺诈问题,目的不是从现有领域转移知识(来源域),而是使推断过程可以解释。与此同时,随着电子商务业务扩展到新的领域,例如新的国家或新市场,也只能显示我们提出的转移任务框架的范围。