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Enhancing Effectiveness of Outlier Detections for Low Density Patterns

机译:增强低密度模式离群值检测的有效性

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Outlier detection is concerned with discovering exceptional behaviors of objects in data sets. It is becoming a growingly useful tool in applications such as credit card fraud detection, discovering criminal behaviors in e-commerce, identifying computer intrusion, detecting health problems, etc. In this paper, we introduce a connectivity-based outlier factor (COF) scheme that improves the effectiveness of an existing local outlier factor (LOF) scheme when a pattern itself has similar neighbourhood density as an outlier. We give theoretical and empirical analysis to demonstrate the improvement in effectiveness and the capability of the COF scheme in comparison with the LOF scheme.
机译:离群检测与发现数据集中对象的异常行为有关。在诸如信用卡欺诈检测,发现电子商务中的犯罪行为,识别计算机入侵,检测健康问题等应用中,它正变得越来越有用的工具。在本文中,我们介绍了一种基于连接的离群因子(COF)方案当图案本身具有与异常值相似的邻域密度时,可以提高现有局部异常值因子(LOF)方案的有效性。我们提供理论和经验分析,以证明与LOF方案相比,COF方案的有效性和功能方面的改进。

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