Node Role-Guided LLMs for Dynamic Graph Clustering
arXiv cs.LG / 3/17/2026
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Key Points
- The paper introduces DyG-RoLLM, an end-to-end interpretable framework for dynamic graph clustering that uses learnable prototypes to map continuous graph embeddings to discrete semantic concepts for better interpretability.
- It decomposes node representations into orthogonal role and clustering subspaces and defines five semantic prototypes (Leader, Contributor, Wanderer, Connector, Newcomer) to distinguish roles within communities.
- A hierarchical LLM reasoning mechanism is designed to generate clustering results and natural language explanations, with consistency feedback serving as weak supervision to refine representations.
- Experiments on four synthetic and six real-world benchmarks demonstrate improved interpretability, robustness, and effectiveness, and the authors release the code on GitHub.
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