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A hybrid outlier detection algorithm based on partitioning clustering and density measures

机译:基于分区聚类和密度测度的混合离群值检测算法

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Outlier detection is an important issue in the realm of data mining. Several applications relay on outlier detection such as intrusion detection, fraud detection, medical and public health data, image processing, etc. Clustering-based outlier detection algorithms are considered as the most important outlier detection approaches. They provide high detection rate, however, they suffer from high false positives. In this paper, we propose a clustering-based outlier detection algorithm that supports searching for outliers not only in small clusters but also in large clusters with an optimized calculation methodology. The experimental results demonstrate the good performance of the algorithm in terms of detection accuracy by increasing the detection rate, decreasing the false positives, and minimizing outlierness factor calculations.
机译:离群检测是数据挖掘领域中的重要问题。一些应用程序依赖于异常值检测,例如入侵检测,欺诈检测,医疗和公共卫生数据,图像处理等。基于聚类的异常值检测算法被认为是最重要的异常值检测方法。它们提供较高的检测率,但是,它们具有较高的误报率。在本文中,我们提出了一种基于聚类的离群值检测算法,该算法不仅支持在小型聚类中而且在大型聚类中使用优化的计算方法搜索离群值。实验结果通过提高检测率,减少误报和最小化离群因素计算,证明了该算法在检测精度方面的良好性能。

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