Pre-train and Refine: Towards Higher Efficiency in K-Agnostic Community Detection without Quality Degradation
May 30, 2024 Β· Declared Dead Β· π Knowledge Discovery and Data Mining
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Authors
Meng Qin, Chaorui Zhang, Yu Gao, Weixi Zhang, Dit-Yan Yeung
arXiv ID
2405.20277
Category
cs.SI: Social & Info Networks
Citations
4
Venue
Knowledge Discovery and Data Mining
Last Checked
4 months ago
Abstract
Community detection (CD) is a classic graph inference task that partitions nodes of a graph into densely connected groups. While many CD methods have been proposed with either impressive quality or efficiency, balancing the two aspects remains a challenge. This study explores the potential of deep graph learning to achieve a better trade-off between the quality and efficiency of K-agnostic CD, where the number of communities K is unknown. We propose PRoCD (Pre-training & Refinement fOr Community Detection), a simple yet effective method that reformulates K-agnostic CD as the binary node pair classification. PRoCD follows a pre-training & refinement paradigm inspired by recent advances in pre-training techniques. We first conduct the offline pre-training of PRoCD on small synthetic graphs covering various topology properties. Based on the inductive inference across graphs, we then generalize the pre-trained model (with frozen parameters) to large real graphs and use the derived CD results as the initialization of an existing efficient CD method (e.g., InfoMap) to further refine the quality of CD results. In addition to benefiting from the transfer ability regarding quality, the online generalization and refinement can also help achieve high inference efficiency, since there is no time-consuming model optimization. Experiments on public datasets with various scales demonstrate that PRoCD can ensure higher efficiency in K-agnostic CD without significant quality degradation.
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