论文标题

F-FADE:边缘流中异常检测的频率分解

F-FADE: Frequency Factorization for Anomaly Detection in Edge Streams

论文作者

Chang, Yen-Yu, Li, Pan, Sosic, Rok, Afifi, M. H., Schweighauser, Marco, Leskovec, Jure

论文摘要

边缘流通常用于捕获动态网络中的交互,例如电子邮件,社交或计算机网络。在边缘流中检测异常或罕见事件的问题具有广泛的应用。 However, it presents many challenges due to lack of labels, a highly dynamic nature of interactions, and the entanglement of temporal and structural changes in the network.当前方法的能力受到限制,无法应对上述挑战并有效地处理大量相互作用。 Here, we propose F-FADE, a new approach for detection of anomalies in edge streams, which uses a novel frequency-factorization technique to efficiently model the time-evolving distributions of frequencies of interactions between node-pairs.然后根据观察到的每种传入相互作用的频率的可能性确定异常。 F-FADE is able to handle in an online streaming setting a broad variety of anomalies with temporal and structural changes, while requiring only constant memory. Our experiments on one synthetic and six real-world dynamic networks show that F-FADE achieves state of the art performance and may detect anomalies that previous methods are unable to find.

Edge streams are commonly used to capture interactions in dynamic networks, such as email, social, or computer networks. The problem of detecting anomalies or rare events in edge streams has a wide range of applications. However, it presents many challenges due to lack of labels, a highly dynamic nature of interactions, and the entanglement of temporal and structural changes in the network. Current methods are limited in their ability to address the above challenges and to efficiently process a large number of interactions. Here, we propose F-FADE, a new approach for detection of anomalies in edge streams, which uses a novel frequency-factorization technique to efficiently model the time-evolving distributions of frequencies of interactions between node-pairs. The anomalies are then determined based on the likelihood of the observed frequency of each incoming interaction. F-FADE is able to handle in an online streaming setting a broad variety of anomalies with temporal and structural changes, while requiring only constant memory. Our experiments on one synthetic and six real-world dynamic networks show that F-FADE achieves state of the art performance and may detect anomalies that previous methods are unable to find.

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