Democratic Recommendation with User and Item Representatives Produced by Graph Condensation
- URL: http://arxiv.org/abs/2511.18279v1
- Date: Sun, 23 Nov 2025 04:09:28 GMT
- Title: Democratic Recommendation with User and Item Representatives Produced by Graph Condensation
- Authors: Jiahao Liang, Haoran Yang, Xiangyu Zhao, Zhiwen Yu, Guandong Xu, Wanyu Wang, Kaixiang Yang,
- Abstract summary: Recent advances in graph condensation offer a promising direction by reducing graph size while preserving essential information.<n>We propose textbfDemoRec, a framework that leverages graph condensation to generate user and item representatives for recommendation tasks.<n>Experiments conducted on four public datasets demonstrate the effectiveness of DemoRec, showcasing substantial improvements in recommendation performance, computational efficiency, and robustness compared to SOTA methods.
- Score: 41.261736328512065
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The challenges associated with large-scale user-item interaction graphs have attracted increasing attention in graph-based recommendation systems, primarily due to computational inefficiencies and inadequate information propagation. Existing methods provide partial solutions but suffer from notable limitations: model-centric approaches, such as sampling and aggregation, often struggle with generalization, while data-centric techniques, including graph sparsification and coarsening, lead to information loss and ineffective handling of bipartite graph structures. Recent advances in graph condensation offer a promising direction by reducing graph size while preserving essential information, presenting a novel approach to mitigating these challenges. Inspired by the principles of democracy, we propose \textbf{DemoRec}, a framework that leverages graph condensation to generate user and item representatives for recommendation tasks. By constructing a compact interaction graph and clustering nodes with shared characteristics from the original graph, DemoRec significantly reduces graph size and computational complexity. Furthermore, it mitigates the over-reliance on high-order information, a critical challenge in large-scale bipartite graphs. Extensive experiments conducted on four public datasets demonstrate the effectiveness of DemoRec, showcasing substantial improvements in recommendation performance, computational efficiency, and robustness compared to SOTA methods.
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