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Research Seminar by QIAO Hezhe | DATE : | 24 July 2025, Thursday | TIME : | 9:30am to 10:10am | VENUE : | Meeting room 4.4, Level 4 School of Computing and Information Systems 1, Singapore Management University, 80 Stamford Road, Singapore 178902
Please register by 22 July 2025 |
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*There are 2 talks in this session, each talk is approximately 20 minutes.* | About the Talk (s) Talk #1: AnomalyGFM: Graph Foundation Model for Zero/Few-shot Anomaly Detection | Graph anomaly detection (GAD) aims to identify abnormal nodes that differ from the majority of the nodes in a graph, which has been attracting significant attention in recent years. Existing generalist graph models have achieved remarkable success in different graph tasks but struggle to generalize to the GAD task. This limitation arises from their difficulty in learning generalized knowledge for capturing the inherently infrequent, irregular and heterogeneous abnormality patterns in graphs from different domains. To address this challenge, we propose AnomalyGFM, a GAD-oriented graph foundation model that supports zero-shot inference and few-shot prompt tuning for GAD in diverse graph datasets. One key insight is that graph-agnostic representations for normal and abnormal classes are required to support effective zero/few-shot GAD across different graphs. Motivated by this, AnomalyGFM is pre-trained to align data-independent, learnable normal and abnormal class prototypes with node representation residuals (i.e., representation deviation of a node from its neighbors). The residual features essentially project the node information into a unified feature space where we can effectively measure the abnormality of nodes from different graphs in a consistent way. This provides a driving force for the learning of graph-agnostic, discriminative prototypes for the normal and abnormal classes, which can be used to enable zero-shot GAD on new graphs, including very large-scale graphs. If there are few-shot labeled normal nodes available in the new graphs, AnomalyGFM can further support prompt tuning to leverage these nodes for better adaptation.
This is a Pre-Conference talk for ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (KDD 2025). | Talk #2: Zero-shot Generalist Graph Anomaly Detection with Unified Neighborhood Prompts | Graph anomaly detection (GAD), which aims to identify nodes in a graph that significantly deviate from normal patterns, plays a crucial role in broad application domains. However, existing GAD methods are one-model-for-one-dataset approaches, i.e., training a separate model for each graph dataset. This largely limits their applicability in real-world scenarios. To overcome this limitation, we propose a novel zero-shot generalist GAD approach UNPrompt that trains a one-for-all detection model, requiring the training of one GAD model on a single graph dataset and then effectively generalizing to detect anomalies in other graph datasets without any retraining or fine-tuning. The key insight in UNPrompt is that i) the predictability of latent node attributes can serve as a generalized anomaly measure and ii) generalized normal and abnormal graph patterns can be learned via latent node attribute prediction in a properly normalized node attribute space. UNPrompt achieves a generalist mode for GAD through two main modules: one module aligns the dimensionality and semantics of node attributes across different graphs via coordinate-wise normalization, while another module learns generalized neighborhood prompts that support the use of latent node attribute predictability as an anomaly score across different datasets.
This is a Pre-Conference talk for 34th International Joint Conference on Artificial Intelligence (IJCAI 2025). |
| | | About the Speaker  | | QIAO Hezhe is a third-year Ph.D. candidate in Computer Science at the School of Computing and Information Systems, Singapore Management University, under the supervision of Prof. Pang Guansong. Prior to that, he received his MS degree from the University of Chinese Academy Science, China. His research interests include graph representation learning, graph anomaly detection, LLM hallucination detection and mitigation. He has published over 10 high quality papers in refereed top-tier conferences and journals, such as NeurIPS, ICML, KDD, IJCAI, and TKDE etc. He has received several awards, such SMU Presidential Doctoral Fellowship Award , SMU Dean List and President’s Award of the Chinese Academy of Sciences . He organized the IJCAI2025 tutorial titled ‘Deep learning for graph anomaly detection’. He also served on the program committees of multiple top conferences and journals. |
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