English

Cluster-wise Graph Transformer with Dual-granularity Kernelized Attention

Machine Learning 2024-12-25 v3

Abstract

In the realm of graph learning, there is a category of methods that conceptualize graphs as hierarchical structures, utilizing node clustering to capture broader structural information. While generally effective, these methods often rely on a fixed graph coarsening routine, leading to overly homogeneous cluster representations and loss of node-level information. In this paper, we envision the graph as a network of interconnected node sets without compressing each cluster into a single embedding. To enable effective information transfer among these node sets, we propose the Node-to-Cluster Attention (N2C-Attn) mechanism. N2C-Attn incorporates techniques from Multiple Kernel Learning into the kernelized attention framework, effectively capturing information at both node and cluster levels. We then devise an efficient form for N2C-Attn using the cluster-wise message-passing framework, achieving linear time complexity. We further analyze how N2C-Attn combines bi-level feature maps of queries and keys, demonstrating its capability to merge dual-granularity information. The resulting architecture, Cluster-wise Graph Transformer (Cluster-GT), which uses node clusters as tokens and employs our proposed N2C-Attn module, shows superior performance on various graph-level tasks. Code is available at https://github.com/LUMIA-Group/Cluster-wise-Graph-Transformer.

Keywords

Cite

@article{arxiv.2410.06746,
  title  = {Cluster-wise Graph Transformer with Dual-granularity Kernelized Attention},
  author = {Siyuan Huang and Yunchong Song and Jiayue Zhou and Zhouhan Lin},
  journal= {arXiv preprint arXiv:2410.06746},
  year   = {2024}
}

Comments

Accepted as NeurIPS 2024 Spotlight

R2 v1 2026-06-28T19:14:08.602Z