Towards Dynamic Message Passing on Graphs Junshu Sun 1,2 Chenxue Y ang 3 Xiangyang Ji4 Qingming Huang 1,2,5
–Neural Information Processing Systems
However, the over-reliance on input topology diminishes the efficacy of message passing and restricts the ability of GNNs.
Neural Information Processing Systems
Oct-10-2025, 10:00:07 GMT
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