Graph Rewiring in GNNs to Mitigate Over-Squashing and Over-Smoothing: A Survey

·ArXiv cs.LG··

arXiv:2605.00951v1 Announce Type: new Abstract: Graph Neural Networks are powerful models for learning from graph-structured data, yet their effectiveness is often limited by two critical challenges: over-squashing, where information from distant nodes is excessively compressed, and over-smoothing, where repeated propagation makes node representations indistinguishable. Both phenomena stem from the interaction between message passing and the input topology, ultimately degrading information flow ...

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