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dc.contributorDepartment of Data Science and Artificial Intelligenceen_US
dc.creatorLiu, Yen_US
dc.creatorLi, Sen_US
dc.creatorZheng, Yen_US
dc.creatorChen, Qen_US
dc.creatorZhang, Cen_US
dc.creatorPan, Sen_US
dc.date.accessioned2025-07-10T01:31:38Z-
dc.date.available2025-07-10T01:31:38Z-
dc.identifier.urihttp://hdl.handle.net/10397/114014-
dc.descriptionNeurIPS 2024: The Thirty-Eighth Annual Conference on Neural Information Processing Systems, Vancouver, 10-15 Dec 2024en_US
dc.language.isoenen_US
dc.publisherNeurIPSen_US
dc.rightsPosted with permission of the author.en_US
dc.titleARC : a generalist graph anomaly detector with in-context learningen_US
dc.typeConference Paperen_US
dc.identifier.volume37en_US
dcterms.abstractGraph anomaly detection (GAD), which aims to identify abnormal nodes that differ from the majority within a graph, has garnered significant attention. However, current GAD methods necessitate training specific to each dataset, resulting in high training costs, substantial data requirements, and limited generalizability when being applied to new datasets and domains. To address these limitations, this paper proposes ARC, a generalist GAD approach that enables a one-for-all'' GAD model to detect anomalies across various graph datasets on-the-fly. Equipped with in-context learning, ARC can directly extract dataset-specific patterns from the target dataset using few-shot normal samples at the inference stage, without the need for retraining or fine-tuning on the target dataset. ARC comprises three components that are well-crafted for capturing universal graph anomaly patterns: 1) smoothness-based feature Alignment module that unifies the features of different datasets into a common and anomaly-sensitive space; 2) ego-neighbor Residual graph encoder that learns abnormality-related node embeddings; and 3) cross-attentive in-Context anomaly scoring module that predicts node abnormality by leveraging few-shot normal samples. Extensive experiments on multiple benchmark datasets from various domains demonstrate the superior anomaly detection performance, efficiency, and generalizability of ARC.en_US
dcterms.accessRightsopen accessen_US
dcterms.bibliographicCitationAdvances in neural information processing systems, 2024, v. 37en_US
dcterms.isPartOfAdvances in neural information processing systemsen_US
dcterms.issued2024-
dc.relation.conferenceConference on Neural Information Processing Systems [NeurIPS]en_US
dc.description.validate202507 bcwhen_US
dc.description.oaVersion of Recorden_US
dc.identifier.FolderNumbera3866-
dc.identifier.SubFormID51471-
dc.description.fundingSourceSelf-fundeden_US
dc.description.pubStatusPublisheden_US
dc.description.oaCategoryCopyright retained by authoren_US
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