Graph In-Context Operator Networks for Generalizable Spatiotemporal Prediction
arXiv cs.AI / 3/16/2026
💬 OpinionModels & Research
Key Points
- In-context operator learning enables neural networks to infer solution operators from contextual examples without weight updates.
- The work provides a controlled comparison against single-operator learning using identical training data and steps.
- It introduces GICON (Graph In-Context Operator Network), combining graph message passing for geometric generalization with example-aware positional encoding for cardinality generalization.
- Experiments on air quality prediction across two Chinese regions show that in-context operator learning outperforms classical operator learning on complex tasks, with strong generalization across spatial domains and robust scaling from few to many inference examples.
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