English

$P^2$GNN: Two Prototype Sets to boost GNN Performance

Machine Learning 2026-03-11 v1

Abstract

Message Passing Graph Neural Networks (MP-GNNs) have garnered attention for addressing various industry challenges, such as user recommendation and fraud detection. However, they face two major hurdles: (1) heavy reliance on local context, often lacking information about the global context or graph-level features, and (2) assumption of strong homophily among connected nodes, struggling with noisy local neighborhoods. To tackle these, we introduce P2P^2GNN, a plug-and-play technique leveraging prototypes to optimize message passing, enhancing the performance of the base GNN model. Our approach views the prototypes in two ways: (1) as universally accessible neighbors for all nodes, enriching global context, and (2) aligning messages to clustered prototypes, offering a denoising effect. We demonstrate the extensibility of our proposed method to all message-passing GNNs and conduct extensive experiments across 18 datasets, including proprietary e-commerce datasets and open-source datasets, on node recommendation and node classification tasks. Results show that P2P^2GNN outperforms production models in e-commerce and achieves the top average rank on open-source datasets, establishing it as a leading approach. Qualitative analysis supports the value of global context and noise mitigation in the local neighborhood in enhancing performance.

Keywords

Cite

@article{arxiv.2603.09195,
  title  = {$P^2$GNN: Two Prototype Sets to boost GNN Performance},
  author = {Arihant Jain and Gundeep Arora and Anoop Saladi and Chaosheng Dong},
  journal= {arXiv preprint arXiv:2603.09195},
  year   = {2026}
}
R2 v1 2026-07-01T11:11:40.633Z