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arxiv 2506.05971 v1 pith:3BO3DP4W submitted 2025-06-06 cs.LG cs.AI

On Measuring Long-Range Interactions in Graph Neural Networks

classification cs.LG cs.AI
keywords long-rangegraphtasksarchitecturesinteractionsmeasureproblemrange
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Long-range graph tasks -- those dependent on interactions between distant nodes -- are an open problem in graph neural network research. Real-world benchmark tasks, especially the Long Range Graph Benchmark, have become popular for validating the long-range capability of proposed architectures. However, this is an empirical approach that lacks both robustness and theoretical underpinning; a more principled characterization of the long-range problem is required. To bridge this gap, we formalize long-range interactions in graph tasks, introduce a range measure for operators on graphs, and validate it with synthetic experiments. We then leverage our measure to examine commonly used tasks and architectures, and discuss to what extent they are, in fact, long-range. We believe our work advances efforts to define and address the long-range problem on graphs, and that our range measure will aid evaluation of new datasets and architectures.

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Cited by 3 Pith papers

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