Patterns of fraud detection using coupled Hidden Markov Model

K. R. Sungkono, R. Sarno
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引用次数: 8

Abstract

The Financial Services Authority does fraud detection through several activities that are recorded in the event logs for detecting fraud. Patterns of Fraud Detection are used to analyze the performances of fraud detection and predict the next fraud detection. Patterns of Fraud Detection can be observed using a map model of fraud detection. On the other hand, modeling fraud detection is difficult because the fraud detection cannot be directly observed through an event log. The event log only records activities triggering by fraud detection. This paper proposes an intention mining method for modeling fraud detection using Coupled Hidden Markov Model. The proposed method determines strategies utilizing the activities and forms a map model of fraud detection using probabilities of Coupled Hidden Markov Model. The experiment outcomes show that the proposed method gets an appropriate map model of fraud detection. This paper also demonstrates that an obtained model using proposed method gets the better validity than an obtained model using Map Miner Method.
基于耦合隐马尔可夫模型的欺诈检测模式
金融服务管理局通过记录在事件日志中的若干活动来检测欺诈。欺诈检测模式用于分析欺诈检测的性能并预测下一次欺诈检测。可以使用欺诈检测的映射模型来观察欺诈检测的模式。另一方面,建模欺诈检测是困难的,因为欺诈检测不能通过事件日志直接观察。事件日志只记录由欺诈检测触发的活动。本文提出了一种基于耦合隐马尔可夫模型的意图挖掘欺诈检测建模方法。该方法利用活动确定策略,并利用耦合隐马尔可夫模型的概率形成欺诈检测的映射模型。实验结果表明,该方法得到了一个合适的欺诈检测映射模型。本文还证明了使用该方法得到的模型比使用地图挖掘方法得到的模型具有更好的有效性。
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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