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PLACE: Prompt Learning for Attributed Community Search in Large Graphs

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In this paper, we propose PLACE (Prompt Learning for Attributed Community Search), an innovative graph prompt learning framework for ACS. Enlightened by prompt-tuning in Natural Language Processing (NLP), where learnable prompt tokens are inserted to contextualize NLP queries, PLACE integrates structural and learnable prompt tokens into the graph as a query-dependent refinement mechanism, forming a prompt-augmented graph. Within this prompt-augmented graph structure, the learned prompt tokens serve as a bridge that strengthens connections between graph nodes for the query, enabling the GNN to more effectively identify patterns of structural cohesiveness and attribute similarity related to the specific query. We employ an alternating training paradigm to optimize both the prompt parameters and the GNN jointly. Moreover, we design a divide-and-conquer strategy to enhance scalability, supporting the model to handle million-scale graphs. Extensive experiments on 9 real-world graphs demonstrate the effectiveness of PLACE for three types of ACS queries, where PLACE achieves higher F1 scores by 22% compared to the state-of-the-arts on average.

Shuheng Fang, Kangfei Zhao, Rener Zhang, Yu Rong, Jeffrey Xu Yu• 2025

Related benchmarks

TaskDatasetResultRank
Community SearchCora
Precision90.55
15
Community DetectionTexas
Precision94.18
10
Attribute from Community (AFC)Citeseer
Precision85.05
5
Attribute from Community (AFC)Washington
Precision92.44
5
Attribute from Community (AFC)Wisconsin
Precision92.56
5
Community SearchCiteseer
Precision86.86
5
Community SearchCornell
Precision89.42
5
Community SearchWashington
Precision92.01
5
Community SearchWisconsin
Precision91.88
5
Community Search (AFN)Citeseer
Precision83.55
5
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