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A Supervised Auto-Tuning Approach for a Banking Fraud Detection System

机译:用于银行欺诈检测系统的监督自学方法

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In this paper, we propose an extension to Banksealer, one of the most recent and effective banking fraud detection systems. In particular, until now Banksealer was unable to exploit analyst feedback to self-tune and improve its performance. It also depended on a complex set of parameters that had to be tuned by hand before operations. To overcome both these limitations, we propose a supervised evolutionary wrapper approach, that considers analyst's feedbacks on fraudulent transactions to automatically tune feature weighting and improve Banksealer's detection performance. We do so by means of a multi-objective genetic algorithm. We deployed our solution in a real-world setting of a large national banking group and conducted an in-depth experimental evaluation. We show that the proposed system was able to detect sophisticated frauds, improving Banksealer's performance of up to 35% in some cases.
机译:在本文中,我们向Banksealer提供了最新和有效的银行欺诈检测系统之一的延伸。特别是,直到现在Banksealer无法利用分析师反馈来自我调整并提高其性能。它还取决于在操作之前必须用手调谐的复杂参数集。为了克服这两个限制,我们提出了一个受监督的进化包装方法,考虑了分析师对欺诈性交易的反馈,以自动调整特征加权,提高Banksealer的检测性能。我们通过多目标遗传算法这样做。我们在大型国家银行集团的真实环境中部署了我们的解决方案,并进行了深入的实验评估。我们表明,在某些情况下,拟议的系统能够检测到复杂的欺诈,提高银行家的表现高达35%。

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