一种新的离群点检测和聚类改进方法

Mohiuddin Ahmed, Abdun Naser
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引用次数: 54

摘要

异常点检测用于检测各种应用领域的异常,包括基于聚类的疾病发病识别、基因表达分析、计算机网络入侵、金融欺诈检测和人类行为分析。现有的检测异常值的方法由于准确性差和缺乏任何通用技术而不足。大多数技术要么将小集群视为离群值,要么为每个数据对象的离群值提供评分。这些方法由于计算复杂度高和将正常数据对象错误地识别为异常值而存在局限性。在本文中,我们使用改进的k-means聚类算法提供了一种新的无监督方法来检测异常值。从数据集中去除检测到的异常值以提高聚类精度。我们通过与现有技术和基准性能进行比较来验证我们的方法。在基准数据集上的实验结果表明,我们提出的技术在多个指标上优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach for outlier detection and clustering improvement
Outlier detection is used to detect abnormalities in various application domains including clustering based disease onset identification, gene expression analysis, computer network intrusion, financial fraud detection and human behaviour analysis. Existing methods to detect outliers are inadequate due to poor accuracy and lack of any general technique. Most techniques consider either small clusters as outliers or provide a score for being outlier to each data object. These approaches have limitations due to high computational complexity and misidentification of normal data object as outliers. In this paper, we provide a novel unsupervised approach to detect outliers using a modified k-means clustering algorithm. The detected outliers are removed from the dataset to improve clustering accuracy. We validate our approach by comparing against existing techniques and benchmark performance. Experimental results on benchmark datasets show that our proposed technique outperforms existing methods on several measures.
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