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OutRank: A GRAPH-BASED OUTLIER DETECTION FRAMEWORK USING RANDOM WALK

机译:OutRank:使用随机游走的基于图形的外部检测框架

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This paper introduces a stochastic graph-based algorithm, called OutRank, for detecting outliers in data. We consider two approaches for constructing a graph representation of the data, based on the object similarity and number of shared neighbors between objects. The heart of this approach is the Markov chain model that is built upon this graph, which assigns an outlier score to each object. Using this framework, we show that our algorithm is more robust than the existing outlier detection schemes and can effectively address the inherent problems of such schemes. Empirical studies conducted on both real and synthetic data sets show that significant improvements in detection rate and false alarm rate are achieved using the proposed framework.
机译:本文介绍了一种基于随机图的算法,称为OutRank,用于检测数据中的异常值。我们基于对象相似度和对象之间共享邻居的数量,考虑了两种构建数据图形表示的方法。这种方法的核心是建立在该图上的马尔可夫链模型,该模型为每个对象分配离群值。使用此框架,我们证明了我们的算法比现有的异常检测方案更健壮,并且可以有效解决此类方案的内在问题。对真实数据集和综合数据集进行的经验研究表明,使用建议的框架可以显着提高检测率和误报率。

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