Data-Driven Integration Kernels for Interpretable Nonlocal Operator Learning
arXiv cs.LG / 3/12/2026
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Key Points
- The paper proposes data-driven integration kernels to add structure to nonlocal operator learning by separating nonlocal information aggregation from local nonlinear prediction.
- Spatiotemporal predictor fields are first integrated using learnable kernels over horizontal space, height, and time, after which a local nonlinear mapping is applied to the resulting features.
- This design confines nonlinear interactions to a small set of integrated features, making each kernel interpretable as a weighting pattern that reveals which locations, vertical levels, and past timesteps contribute most to the prediction.
- The framework is demonstrated for South Asian monsoon precipitation using a hierarchy of neural network models, showing kernel-based models achieve near-baseline performance with far fewer trainable parameters.
- The results suggest that much of the relevant nonlocal information can be captured through a small set of interpretable integrations when appropriate structural constraints are imposed.
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