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Event-Aware Prompt Learning for Dynamic Graphs

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Real-world graph typically evolve via a series of events, modeling dynamic interactions between objects across various domains. For dynamic graph learning, dynamic graph neural networks (DGNNs) have emerged as popular solutions. Recently, prompt learning methods have been explored on dynamic graphs. However, existing methods generally focus on capturing the relationship between nodes and time, while overlooking the impact of historical events. In this paper, we propose EVP, an event-aware dynamic graph prompt learning framework that can serve as a plug-in to existing methods, enhancing their ability to leverage historical events knowledge. First, we extract a series of historical events for each node and introduce an event adaptation mechanism to align the fine-grained characteristics of these events with downstream tasks. Second, we propose an event aggregation mechanism to effectively integrate historical knowledge into node representations. Finally, we conduct extensive experiments on four public datasets to evaluate and analyze EVP.

Xingtong Yu, Ruijuan Liang, Renhe Jiang, Dongyuan Li, Yunxiao Zhao, Xinming Zhang, Yuan Fang• 2025

Related benchmarks

TaskDatasetResultRank
Node ClassificationREDDIT--
216
Node ClassificationWikipedia
AUC87.18
40
Node ClassificationMOOC
AUC-ROC78.78
34
Link PredictionMOOC (inductive)
AUC-ROC97.97
25
Inductive Link PredictionWikipedia
AUC-ROC98.12
13
Inductive Link PredictionREDDIT
AUC-ROC99.79
13
Inductive Link PredictionGenre
AUC-ROC0.9984
13
Transductive link predictionWikipedia
AUC ROC98.47
13
Transductive link predictionREDDIT
AUC-ROC99.85
13
Transductive link predictionMOOC
AUC-ROC98.16
13
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