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FedCIGAR: A Personalized Reconstruction Approach for Federated Graph-level Anomaly Detection

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Graph-level anomaly detection (GLAD) is crucial for ensuring the reliability of graph-driven applications by identifying abnormal graphs that deviate from the majority. Considering the privacy concerns in distributed scenarios, federated graph-level anomaly detection (FedGLAD) has emerged as a promising solution to enable collaborative detection without sharing raw data. However, existing methods suffer from poor generalization due to the reliance on unrealistic synthetic anomalies and insufficient personalization capabilities under data heterogeneity. To address these challenges, we propose a novel Federated graph-level anomaly detection approach with Cluster-adaptIve GAted Reconstruction (FedCIGAR). Specifically, we design a reconstruction-based paradigm trained on normal graphs to avoid synthetic data. Furthermore, we introduce a client-side node contribution gating mechanism and a server-side sliding window-based clustering strategy to tackle data heterogeneity. Extensive experiments demonstrate that FedCIGAR achieves superior performance and robustness in contrast to state-of-the-art methods.

Yunfeng Zhao, Yixin Liu, Qingfeng Chen, Shiyuan Li, Yue Tan, Shirui Pan• 2026

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionAIDS
AUC99.33
19
Anomaly Detectionimdb-binary
AUC70.25
8
Anomaly DetectionMUTAG
AUC97.52
8
Anomaly DetectionDD
AUC83.13
8
Graph-level Anomaly DetectionMOLECULES
AUC74.22
8
Graph-level Anomaly DetectionBioChem
AUC0.722
8
Graph-level Anomaly DetectionSMALL
AUC70.03
8
Graph-level Anomaly DetectionMix
AUC0.6377
8
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