A Comparative Study for Outlier Detection Techniques in Data Mining

Z. A. Bakar, R. Mohemad, A. Ahmad, M. M. Deris
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引用次数: 162

Abstract

Existing studies in data mining mostly focus on finding patterns in large datasets and further using it for organizational decision making. However, finding such exceptions and outliers has not yet received as much attention in the data mining field as some other topics have, such as association rules, classification and clustering. Thus, this paper describes the performance of control chart, linear regression, and Manhattan distance techniques for outlier detection in data mining. Experimental studies show that outlier detection technique using control chart is better than the technique modeled from linear regression because the number of outlier data detected by control chart is smaller than linear regression. Further, experimental studies shows that Manhattan distance technique outperformed compared with the other techniques when the threshold values increased
数据挖掘中离群点检测技术的比较研究
现有的数据挖掘研究主要集中在发现大型数据集中的模式,并将其进一步用于组织决策。然而,在数据挖掘领域,发现这些异常和离群值还没有像关联规则、分类和聚类等其他主题那样受到重视。因此,本文描述了控制图、线性回归和曼哈顿距离技术在数据挖掘中用于异常点检测的性能。实验研究表明,由于控制图检测到的离群数据数量比线性回归少,因此控制图检测技术优于线性回归建模技术。此外,实验研究表明,当阈值增加时,曼哈顿距离技术的表现优于其他技术
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