Sparse Bayesian Message Passing under Structural Uncertainty
Choi, Yoonhyuk, Choi, Jiho, Kim, Chanran, Lee, Yumin, Shin, Hawon, Jeon, Yeowon, Kim, Minjeong, Kang, Jiwoo
Semi-supervised learning on real-world graphs is frequently challenged by heterophily, where the observed graph is unreliable or label-disassortative. Many existing graph neural networks either rely on a fixed adjacency structure or attempt to handle structural noise through regularization. In this work, we explicitly capture structural uncertainty by modeling a posterior distribution over signed adjacency matrices, allowing each edge to be positive, negative, or absent. We propose a sparse signed message passing network that is naturally robust to edge noise and heterophily, which can be interpreted from a Bayesian perspective. By combining (i) posterior marginalization over signed graph structures with (ii) sparse signed message aggregation, our approach offers a principled way to handle both edge noise and heterophily. Experimental results demonstrate that our method outperforms strong baseline models on heterophilic benchmarks under both synthetic and real-world structural noise. We provide an anonymous repository at: https://anonymous.4open.science/r/SpaM-F2C8
Jan-6-2026
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- Research Report > New Finding (0.48)
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