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Prevention of Security Concerns during Outlier DetectionKeywords: DataMining , OutlierDetection , Clustering , Outlier , Clust erdisplacement , Cluster rotation . Abstract: Data objects which do not comply with the general behavior or model of the data are called Outliers. OutlierDetection in databases has numerous applications such as fraud detection, customized marketing, and the search for terrorism. However, the use of Outlier Detection for various purposes is not an easy task. In this paper, we propose a technique for detecting outliers in an easier manner using clustering. We analyze our technique to clearly distinguish the normal data from outliers.
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