Abstract
The message-passing paradigm of Graph Neural Networks often struggles with exchanging information across distant nodes typically due to structural bottlenecks in certain graph regions, a limitation known as over-squashing. To reduce such bottlenecks, graph rewiring, which modifies graph topology, has been widely used. However, existing graph rewiring techniques often overlook the need to preserve critical properties of the original graph, e.g., spectral properties. Moreover, many approaches rely on increasing edge count to improve connectivity, which introduces significant computational overhead and exacerbates the risk of over-smoothing. In this paper, we propose a novel graph-rewiring method that leverages spectral graph sparsification for mitigating over-squashing. Specifically, our method generates graphs with enhanced connectivity while maintaining sparsity and largely preserving the original graph spectrum, effectively balancing structural bottleneck reduction and graph property preservation. Experimental results validate the effectiveness of our approach, demonstrating its superiority over strong baseline methods in classification accuracy and retention of the Laplacian spectrum.
| Original language | English |
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| Title of host publication | Proceedings of the 42nd International Conference on Machine Learning |
| Pages | 37051-37070 |
| Number of pages | 20 |
| Publication status | Published - 19 Jul 2025 |
| Event | The 42nd International Conference on Machine Learning (ICML 2025) - Vancouver Convention Center, Vancouver, Canada Duration: 13 Jul 2025 → 19 Jul 2025 https://icml.cc/Conferences/2025 |
Publication series
| Name | Proceedings of Machine Learning Research |
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| Volume | 267 |
| ISSN (Electronic) | 2640-3498 |
Conference
| Conference | The 42nd International Conference on Machine Learning (ICML 2025) |
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| Abbreviated title | ICML 2025 |
| Country/Territory | Canada |
| City | Vancouver |
| Period | 13/07/25 → 19/07/25 |
| Internet address |