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Fuzzy Clustering-Based Approach for Outlier Detection

机译:基于模糊的聚类方法对异常值检测方法

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Outlier detection is an important task in a wide variety of application areas. In this paper, a proposed method based on fuzzy clustering approaches for outlier detection is presented. We first perform the c-means fuzzy clustering algorithm. Small clusters are then determined and considered as outlier clusters. The rest of outliers (if any) are then detected in the remaining clusters based on temporary removing a point from the data set and re-calculating the objective function. If a noticeable change occurred in the Objective Function (OF), the point is considered an outlier. Experimental results show that our method works well. The test results show that the proposed approach gave good results when applied to different data sets.
机译:异常值检测是各种应用领域的重要任务。本文提出了一种基于对异常检测方法的基于模糊聚类方法的提出方法。我们首先执行C-means模糊聚类算法。然后确定小簇并被视为异常值簇。然后基于从数据集的临时删除点并重新计算目标函数,在其余的簇中检测其余的异常值(如果有)。如果在目标函数(例如)中发生明显的变化,则该点被认为是一个异常值。实验结果表明,我们的方法运作良好。测试结果表明,当应用于不同的数据集时,所提出的方法得到了良好的结果。

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