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An efficient strategy to detect outlier transactions for knowledge mining

机译:一种有效的策略,用于检测离群交易以进行知识挖掘

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Instant identification of outlier patterns is very important in modern-day engineering problems such as credit card fraud detection and network intrusion detection. Most previous studies focused on finding outliers that are hidden in numerical datasets. Unfortunately, those outlier detection methods were not directly applicable to real life transaction databases. Although a limited literature presented methods to find outliers in the transaction datasets, they did not address what really caused the transactions to become abnormal. In this paper, an improved framework is proposed to identify the outlier transactions as well as to find the most possible items that induce the abnormal transactions. Several definitions are defined as prerequisite for outlier detection. Efficiency comparisons with previous work are also done to verify the effectiveness of the proposed framework.
机译:在现代工程问题(例如信用卡欺诈检测和网络入侵检测)中,异常模式的即时识别非常重要。以前的大多数研究都集中在寻找隐藏在数值数据集中的离群值。不幸的是,这些离群值检测方法并不直接适用于现实生活中的交易数据库。尽管有限的文献提出了在交易数据集中查找异常值的方法,但它们并未解决真正导致交易异常的原因。在本文中,提出了一种改进的框架来识别异常交易,并找到导致异常交易的最可能项目。定义了几个定义作为离群值检测的先决条件。还与以前的工作进行了效率比较,以验证所提出框架的有效性。

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