An Analysis of Outlier Detection through clustering method

T. Chandrakala, S. Rajini
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Abstract

This research paper deals with an outlier which is known as an unusual behavior of any substance present in the spot. This is a detection process that can be employed for both anomaly detection and abnormal observation. This can be obtained through other members who belong to that data set. The deviation present in the outlier process can be attained by measuring certain terms like range, size, activity, etc. By detecting outlier one can easily reject the negativity present in the field. For instance, in healthcare, the health condition of a person can be determined through his latest health report or his regular activity. When found the person being inactive there may be a chance for that person to be sick. Many approaches have been used in this research paper for detecting outliers. The approaches used in this research are 1) Centroid based approach based on K-Means and Hierarchical Clustering algorithm and 2) through Clustering based approach. This approach may help in detecting outlier by grouping all similar elements in the same group. For grouping, the elements clustering method paves a way for it. This research paper will be based on the above mentioned 2 approaches.
聚类方法的离群点检测分析
这篇研究论文处理了一个异常值,即任何存在于现场的物质的不寻常行为。这是一种既可用于异常检测又可用于异常观测的检测过程。这可以通过属于该数据集的其他成员获得。异常过程中存在的偏差可以通过测量范围、大小、活动等特定术语来获得。通过检测异常值,一个人可以很容易地拒绝磁场中存在的消极性。例如,在医疗保健领域,一个人的健康状况可以通过他最近的健康报告或他的定期活动来确定。当发现这个人不活跃时,这个人就有可能生病。本文采用了多种方法来检测异常值。本研究采用的方法有:1)基于K-Means和分层聚类算法的质心方法和2)基于聚类的聚类方法。这种方法可以通过将所有相似的元素分组在同一组中来帮助检测异常值。在分组方面,元素聚类方法为分组铺平了道路。本研究论文将基于上述两种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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