TY - JOUR
T1 - A Deep Multi-View Framework for Anomaly Detection on Attributed Networks
AU - Peng, Zhen
AU - Luo, Minnan
AU - Li, Jundong
AU - Xue, Luguo
AU - Zheng, Qinghua
N1 - Publisher Copyright:
© 1989-2012 IEEE.
PY - 2022/6/1
Y1 - 2022/6/1
N2 - The explosion of modeling complex systems using attributed networks boosts the research on anomaly detection in such networks, which can be applied in various high-impact domains. Many existing attempts, however, do not seriously tackle the inherent multi-view property in attribute space but concatenate multiple views into a single feature vector, which inevitably ignores the incompatibility between heterogeneous views caused by their own statistical properties. Actually, the distinct but complementary information brought by multi-view data promises the potential for more effective anomaly detection than the efforts only based on single-view data. Furthermore, the abnormal patterns naturally behave diversely in different views, which coincides with people's desire to discover specific abnormality according to their preferences for views (attributes). Most existing methods cannot adapt to people's requirements as they fail to consider the idiosyncrasy of user preferences. Therefore, we propose a multi-view framework Alarm to incorporate user preferences into anomaly detection and simultaneously tackle heterogeneous attribute characteristics through multiple graph encoders and a well-designed aggregator that supports self-learning and user-guided learning. Experiments on synthetic and real-world datasets, e.g., Disney, Books, and Enron, corroborate the improvement of Alarm in detection accuracy evaluated by the AUC metric and its effectiveness in supporting user-oriented anomaly detection.
AB - The explosion of modeling complex systems using attributed networks boosts the research on anomaly detection in such networks, which can be applied in various high-impact domains. Many existing attempts, however, do not seriously tackle the inherent multi-view property in attribute space but concatenate multiple views into a single feature vector, which inevitably ignores the incompatibility between heterogeneous views caused by their own statistical properties. Actually, the distinct but complementary information brought by multi-view data promises the potential for more effective anomaly detection than the efforts only based on single-view data. Furthermore, the abnormal patterns naturally behave diversely in different views, which coincides with people's desire to discover specific abnormality according to their preferences for views (attributes). Most existing methods cannot adapt to people's requirements as they fail to consider the idiosyncrasy of user preferences. Therefore, we propose a multi-view framework Alarm to incorporate user preferences into anomaly detection and simultaneously tackle heterogeneous attribute characteristics through multiple graph encoders and a well-designed aggregator that supports self-learning and user-guided learning. Experiments on synthetic and real-world datasets, e.g., Disney, Books, and Enron, corroborate the improvement of Alarm in detection accuracy evaluated by the AUC metric and its effectiveness in supporting user-oriented anomaly detection.
KW - Anomaly detection
KW - attributed networks
KW - graph convolutional networks
KW - unsupervised learning
UR - https://www.scopus.com/pages/publications/85129513802
U2 - 10.1109/TKDE.2020.3015098
DO - 10.1109/TKDE.2020.3015098
M3 - 文章
AN - SCOPUS:85129513802
SN - 1041-4347
VL - 34
SP - 2539
EP - 2552
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 6
ER -