TY - GEN
T1 - Discriminative graph-level anomaly detection via dual-students-teacher model
AU - Lin, Fu
AU - Luo, Xuexiong
AU - Wu, Jia
AU - Yang, Jian
AU - Xue, Shan
AU - Wang, Zitong
AU - Gong, Haonan
PY - 2023
Y1 - 2023
N2 - Different from the current node-level anomaly detection task, the goal of graph-level anomaly detection is to find abnormal graphs that significantly differ from others in a graph set. Due to the scarcity of research on the work of graph-level anomaly detection, the detailed description of graph-level anomaly is insufficient. Furthermore, existing works focus on capturing anomalous graph information to learn better graph representations, but they ignore the importance of an effective anomaly score function for evaluating abnormal graphs. Thus, in this work, we first define anomalous graph information including node and graph property anomalies in a graph set and adopt node-level and graph-level information differences to identify them, respectively. Then, we introduce a discriminative graph-level anomaly detection framework with dual-students-teacher model, where the teacher model with a heuristic loss are trained to make graph representations more divergent. Then, two competing student models trained by normal and abnormal graphs respectively fit graph representations of the teacher model in terms of node-level and graph-level representation perspectives. Finally, we combine representation errors between two student models to discriminatively distinguish anomalous graphs. Extensive experiment analysis demonstrates that our method is effective for the graph-level anomaly detection task on graph datasets in the real world.(The source code is at https://github.com/whb605/GLADST.git ).
AB - Different from the current node-level anomaly detection task, the goal of graph-level anomaly detection is to find abnormal graphs that significantly differ from others in a graph set. Due to the scarcity of research on the work of graph-level anomaly detection, the detailed description of graph-level anomaly is insufficient. Furthermore, existing works focus on capturing anomalous graph information to learn better graph representations, but they ignore the importance of an effective anomaly score function for evaluating abnormal graphs. Thus, in this work, we first define anomalous graph information including node and graph property anomalies in a graph set and adopt node-level and graph-level information differences to identify them, respectively. Then, we introduce a discriminative graph-level anomaly detection framework with dual-students-teacher model, where the teacher model with a heuristic loss are trained to make graph representations more divergent. Then, two competing student models trained by normal and abnormal graphs respectively fit graph representations of the teacher model in terms of node-level and graph-level representation perspectives. Finally, we combine representation errors between two student models to discriminatively distinguish anomalous graphs. Extensive experiment analysis demonstrates that our method is effective for the graph-level anomaly detection task on graph datasets in the real world.(The source code is at https://github.com/whb605/GLADST.git ).
KW - graph anomaly detection
KW - graph neural networks
KW - dual-students-teacher model
UR - http://www.scopus.com/inward/record.url?scp=85177447724&partnerID=8YFLogxK
U2 - 10.1007/978-3-031-46671-7_18
DO - 10.1007/978-3-031-46671-7_18
M3 - Conference proceeding contribution
AN - SCOPUS:85177447724
SN - 9783031466700
T3 - Lecture Notes in Computer Science
SP - 261
EP - 276
BT - Advanced Data Mining and Applications
A2 - Yang, Xiaochun
A2 - Suhartanto, Heru
A2 - Wang, Guoren
A2 - Wang, Bin
A2 - Jiang, Jing
A2 - Li, Bing
A2 - Zhu, Huaijie
A2 - Cui, Ningning
PB - Springer, Springer Nature
CY - Cham
T2 - 19th International Conference on Advanced Data Mining and Applications, ADMA 2023
Y2 - 21 August 2023 through 23 August 2023
ER -