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Mean-shift outlier detection and filtering

机译:平均移位异常检测和过滤

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摘要

Traditional outlier detection methods create a model for data and then label as outliers for objects that deviate significantly from this model. However, when dat has many outliers, outliers also pollute the model. The model then becomes unreliable, thus rendering most outlier detectors to become ineffective. To solve this problem, we propose a mean-shift outlier detector. This detector employs a mean-shift technique to modify data and cancel the bias caused by the outliers. The mean-shift technique replaces every object by the mean of its k-nearest neighbors which essentially removes the effect of outliers before clustering without the need to know the outliers. In addition, it also detects outliers based on the distance shifted. Our experiments show that the proposed method works well regardless of the number of outliers in the data. This method outperforms all state-of-the-art methods tested, with both real-world numeric datasets as well as generated numeric and string datasets.
机译:传统的离群点检测方法为数据创建一个模型,然后将显著偏离该模型的对象标记为离群点。然而,当dat有许多异常值时,异常值也会污染模型。然后,模型变得不可靠,从而导致大多数异常检测器变得无效。为了解决这个问题,我们提出了一种均值漂移异常检测器。该检测器采用均值漂移技术来修改数据,并消除由异常值引起的偏差。mean-shift技术将每个对象替换为其k近邻的平均值,这在聚类之前基本上消除了异常值的影响,而不需要知道异常值。此外,它还根据移动的距离检测异常值。我们的实验表明,无论数据中存在多少异常值,该方法都能很好地工作。该方法优于所有经过测试的最先进方法,包括真实数字数据集以及生成的数字和字符串数据集。

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