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Outlier detection score based on ordered distance difference

机译:基于有序距离差异的异常值检测分数

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Outlier Detection is one of the most important topics in data mining and knowledge discovery in databases. It is to find a methodology to detect instances in a dataset that do not conform to the rest of the dataset. Local Outlier Factor is one of the earlier outlier detection score. In this paper, we propose a new approach for parameter-free outlier detection algorithm to compute Ordered Distance Difference Outlier Factor. We formulate a new outlier score for each instance by considering the difference of ordered distances. Then, we use this value to compute an outlier score. We use a score of each instance to provide a degree of outlier and compare it with LOF. Our algorithm can produce OOF in Θ (n2) without parameter.
机译:异常值检测是数据库中数据挖掘和知识发现中最重要的主题之一。它是找到一种方法来检测不符合数据集其余部分的数据集中的实例。本地异常因素是早期的异常检测分数之一。在本文中,我们提出了一种新方法,可以实现无参数异常值检测算法来计算有序距离差异异常因素因子。通过考虑订购距离的差异,我们为每个实例制定了新的异常分数。然后,我们使用此值来计算异常分数。我们使用每个实例的分数来提供一定程度的异常值并将其与LOF进行比较。我们的算法可以在没有参数的情况下在θ(n 2 )中产生OOF。

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