Complex networks have now become integral parts of modern information infrastructures. This paper proposes a user-centric method for detecting anomalies in heterogeneous information networks, in which nodes and/or edges might be from different types. In the proposed anomaly detection method, users interact directly with the system and anomalous entities can be detected through queries. Our approach is based on tensor decomposition and clustering methods. We also propose a network generation model to construct synthetic heterogeneous information network to test the performance of the proposed method. The proposed anomaly detection method is compared with state-of-the-art methods in both synthetic and real-world networks. Experimental results show that the proposed tensor-based method considerably outperforms the existing anomaly detection methods.
翻译:本文提出了一种以用户为中心的方法,用以检测不同信息网络中的异常现象,其中节点和/或边缘可能来自不同类型; 在拟议的异常现象探测方法中,用户可以通过查询与系统和异常实体直接互动; 我们的方法是以高分解和集群方法为基础; 我们还提议了一个网络生成模型,用以构建合成多样性信息网络,以测试拟议方法的性能; 将拟议的异常现象探测方法与合成网络和现实世界网络中最先进的方法进行比较; 实验结果显示,拟议的以高压为基础的方法大大优于现有的异常现象探测方法。