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A comparative study of cluster based outlier detection, distance based outlier detection and density based outlier detection techniques

机译:基于集群的异常检测,基于距离的异常检测和基于密度的异常值检测技术的比较研究

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As there is an increasing demand of data, outlier detection is coming across as a popular field of research. Outlier is stated as an observation which is dissimilar from the other observations present in the data set. It is advantageous in the fields like medical industry, crime detection, fraudulent transaction, public safety etc. Outlier can be learnt in different fields like big data, time series data, high dimension data, biological data, uncertain data and many more. Most of the time 10% of the whole sample data set is incorrect, not accessible or missing sometimes. This paper studies and compares the popular outlier detection algorithms namely, Cluster based outlier detection, Distance based outlier detection and Density based outlier detection. Comparative study of these outlier detection techniques is performed to find out most efficient outlier detection method for calculation of the outlier.
机译:随着数据需求越来越大,异常检测是作为一种流行的研究领域。异常值称为观察,这与数据集中存在的其他观察结果不同。它在医学行业,犯罪检测,欺诈交易,公共安全等领域有利。异常值可以在大数据,时间序列数据,高维数据,生物数据,不确定数据等不同领域学习。整个示例数据集的大部分时间10 %是不正确的,有时不可访问或缺少。本文研究并比较了流行的异常检测算法,即基于集群的异常检测,基于距离的异口检测和基于密度的异常检测。对这些异常检测技术进行比较研究,以找出计算出异常值的最有效的异常检测方法。

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