Representing Long-Range Context for Graph Neural Networks with Global Attention
–Neural Information Processing Systems
Graph neural networks are powerful architectures for structured datasets. However, current methods struggle to represent long-range dependencies. Scaling the depth or width of GNNs is insufficient to broaden receptive fields as larger GNNs encounter optimization instabilities such as vanishing gradients and representation oversmoothing, while pooling-based approaches have yet to become as universally useful as in computer vision.
Neural Information Processing Systems
Aug-15-2025, 01:57:57 GMT
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