Deep Q-network-based adaptive alert threshold selection policy for payment fraud systems in retail banking

Hongda Shen, Eren Kurshan
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引用次数: 15

Abstract

Machine learning models have widely been used in fraud detection systems. Most of the research and development efforts have been concentrated on improving the performance of the fraud scoring models. Yet, the downstream fraud alert systems still have limited to no model adoption and rely on manual steps. Alert systems are pervasively used across all payment channels in retail banking and play an important role in the overall fraud detection process. Current fraud detection systems end up with large numbers of dropped alerts due to their inability to account for the alert processing capacity. Ideally, alert threshold selection enables the system to maximize the fraud detection while balancing the upstream fraud scores and the available bandwidth of the alert processing teams. However, in practice, fixed thresholds that are used for their simplicity do not have this ability. In this paper, we propose an enhanced threshold selection policy for fraud alert systems. The proposed approach formulates the threshold selection as a sequential decision making problem and uses Deep Q-Network based reinforcement learning. Experimental results show that this adaptive approach outperforms the current static solutions by reducing the fraud losses as well as improving the operational efficiency of the alert system.
基于深度q网络的零售银行支付欺诈系统自适应报警阈值选择策略
机器学习模型已广泛应用于欺诈检测系统。大部分的研究和开发工作都集中在提高欺诈评分模型的性能上。然而,下游欺诈警报系统仍然局限于没有模型的采用,并且依赖于手动步骤。警报系统广泛应用于零售银行的所有支付渠道,在整个欺诈检测过程中发挥着重要作用。目前的欺诈检测系统由于无法考虑到警报处理能力,导致大量的警报被丢弃。理想情况下,警报阈值选择使系统能够最大化欺诈检测,同时平衡上游欺诈评分和警报处理团队的可用带宽。然而,在实践中,为了简单而使用的固定阈值不具备这种能力。在本文中,我们提出了一种用于欺诈警报系统的增强阈值选择策略。提出的方法将阈值选择作为一个顺序决策问题,并使用基于Deep Q-Network的强化学习。实验结果表明,该自适应方法在减少欺诈损失的同时提高了警报系统的运行效率,优于现有的静态解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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