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Outlier Detection Based on Leave-One-Out Density Using Binary Decision Diagrams

机译:基于二元决策图的留一法密度的离群值检测

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We propose a novel method for detecting outliers based on the leave-one-out density. The leave-one-out density of a datum is defined as a ratio of the number of data inside a region to the volume of the region after the datum is removed from an original data set. We propose an efficient algorithm that evaluates the leave-one-out density of each datum on a set of regions around the datum by using binary decision diagrams. The time complexity of the proposed method is near linear with respect to the size of a data set, while the outlier detection accuracy is still comparable to other methods. Experimental results show the usefulness of the proposed method.
机译:我们提出了一种新的方法,基于留一法密度来检测离群值。基准的遗忘密度定义为从原始数据集中删除基准后,区域内部数据的数量与区域体积的比值。我们提出了一种有效的算法,该算法通过使用二进制决策图来评估基准周围的一组区域上每个基准的遗忘密度。相对于数据集的大小,所提出方法的时间复杂度几乎是线性的,而异常值检测精度仍可与其他方法媲美。实验结果表明了该方法的有效性。

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