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Incremental Local Evolutionary Outlier Detection for Dynamic Social Networks

机译:动态社交网络的增量局部进化离群值检测

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Numerous applications in dynamic social networks, ranging from telecommunications to financial transactions, create evolving datasets. Detecting outliers in such dynamic networks is inherently challenging, because the arbitrary linkage structure with massive information is changing over time. Little research has been done on detecting outliers for dynamic social networks, even then, they represent networks as un-weighted graphs and identify outliers from a relatively global perspective. Thus, existing approaches fail to identify the objects with abnormal evolutionary behavior only with respect to their local neighborhood. We define such objects as local evolutionary outliers, LEOutliers. This paper proposes a novel incremental algorithm IcLEOD to detect LEOutliers in weighted graphs. By focusing only on the time-varying components (e.g., node, edge and edge weight), IcLEOD algorithm is highly efficient in large and gradually evolving networks. Experimental results on both real and synthetic datasets illustrate that our approach of finding local evolutionary outliers can be practical.
机译:动态社会网络中的许多应用程序,从电信到金融交易,都可以创建不断发展的数据集。在这种动态网络中检测异常值具有固有的挑战性,因为随时间推移,具有大量信息的任意链接结构正在发生变化。关于检测动态社交网络离群值的研究很少,即使如此,它们仍将网络表示为未加权图并从相对全局的角度识别离群值。因此,现有方法无法仅根据其局部邻域来识别具有异常进化行为的对象。我们将这样的对象定义为局部进化离群值LEOutliers。本文提出了一种新颖的增量算法IcLEOD来检测加权图中的LEOutliers。通过仅关注随时间变化的分量(例如,节点,边缘和边缘权重),IcLEOD算法在大型且逐渐发展的网络中非常高效。在真实和合成数据集上的实验结果表明,我们找到局部进化离群值的方法是可行的。

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