A Peer Dataset Comparison Outlier Detection Model Applied to Financial Surveillance

Tang Jun
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引用次数: 9

Abstract

Outlier detection is a key element for intelligent financial surveillance system. The detection procedures generally fall into two categories: comparing every transaction against its account history and further more, comparing against a peer group to determine if the behavior is unusual. The later approach shows particular merits in efficiently extracting suspicious transaction and reducing false positive rate. Peer group analysis concept is largely dependent on a cross-datasets outlier detection model. In this paper, we propose a new cross outlier detection model based on distance definition incorporated with the financial transaction data features. An approximation algorithm accompanied with the model is provided to optimize the computation of the deviation from tested data point to the reference dataset. An experiment based on real bank data blended with synthetic outlier cases shows promising results of our model in reducing false positive rate while enhancing the discriminative rate remarkably
一种应用于金融监控的同行数据比较离群点检测模型
异常点检测是智能金融监控系统的关键环节。检测过程通常分为两类:将每笔交易与其账户历史进行比较,再进一步,将其与对等组进行比较,以确定行为是否异常。后一种方法在有效提取可疑交易和降低误报率方面显示出独特的优点。对等组分析的概念很大程度上依赖于一个跨数据集的离群检测模型。本文提出了一种基于距离定义并结合金融交易数据特征的交叉离群点检测模型。提出了一种与模型配套的近似算法,以优化测试数据点与参考数据集偏差的计算。基于真实银行数据和合成离群案例的实验表明,该模型在降低误报率的同时显著提高了判别率
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