AI RESEARCH
Topology-Aware Gaussian Graph Repair for Robust Graph Neural Networks
arXiv CS.LG
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ArXi:2606.03462v1 Announce Type: new Graph neural networks have achieved strong performance on graph-structured data, but their effectiveness depends heavily on the quality of the observed graph. In real applications, graph topology is often imperfect: noisy edges may connect unrelated nodes, while missing edges may prevent useful information from being propagated. Existing robust graph learning methods mainly address this problem by removing suspicious edges or by learning a new graph structure during.