AttentionAE: Autoencoder for Anomaly Detection in Attributed Networks

Author(s):  
Kenan Qin ◽  
Yihui Zhou ◽  
Bo Tian ◽  
Rui Wang
Author(s):  
Jundong Li ◽  
Harsh Dani ◽  
Xia Hu ◽  
Huan Liu

Attributed networks are pervasive in different domains, ranging from social networks, gene regulatory networks to financial transaction networks. This kind of rich network representation presents challenges for anomaly detection due to the heterogeneity of two data representations. A vast majority of existing algorithms assume certain properties of anomalies are given a prior. Since various types of anomalies in real-world attributed networks co-exist, the assumption that priori knowledge regarding anomalies is available does not hold. In this paper, we investigate the problem of anomaly detection in attributed networks generally from a residual analysis perspective, which has been shown to be effective in traditional anomaly detection problems. However, it is a non-trivial task in attributed networks as interactions among instances complicate the residual modeling process. Methodologically, we propose a learning framework to characterize the residuals of attribute information and its coherence with network information for anomaly detection. By learning and analyzing the residuals, we detect anomalies whose behaviors are singularly different from the majority. Experiments on real datasets show the effectiveness and generality of the proposed framework.


2020 ◽  
Vol 407 ◽  
pp. 39-49
Author(s):  
Luguo Xue ◽  
Yan Chen ◽  
Minnan Luo ◽  
Zhen Peng ◽  
Jun Liu

Author(s):  
Kaize Ding ◽  
Jundong Li ◽  
Rohit Bhanushali ◽  
Huan Liu

Author(s):  
Ling Huang ◽  
Ye Zhu ◽  
Yuefang Gao ◽  
Tuo Liu ◽  
Chao Chang ◽  
...  

Author(s):  
Yixin Liu ◽  
Zhao Li ◽  
Shirui Pan ◽  
Chen Gong ◽  
Chuan Zhou ◽  
...  

Author(s):  
Zhen Peng ◽  
Minnan Luo ◽  
Jundong Li ◽  
Huan Liu ◽  
Qinghua Zheng

The key point of anomaly detection on attributed networks lies in the seamless integration of network structure information and attribute information. A vast majority of existing works are mainly based on the Homophily assumption that implies the nodal attribute similarity of connected nodes. Nonetheless, this assumption is untenable in practice as the existence of noisy and structurally irrelevant attributes may adversely affect the anomaly detection performance. Despite the fact that recent attempts perform subspace selection to address this issue, these algorithms treat subspace selection and anomaly detection as two separate steps which often leads to suboptimal solutions. In this paper, we investigate how to fuse attribute and network structure information more synergistically to avoid the adverse effects brought by noisy and structurally irrelevant attributes. Methodologically, we propose a novel joint framework to conduct attribute selection and anomaly detection as a whole based on CUR decomposition and residual analysis. By filtering out noisy and irrelevant node attributes, we perform anomaly detection with the remaining representative attributes. Experimental results on both synthetic and real-world datasets corroborate the effectiveness of the proposed framework.


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