One Operator to Rule Them All? On Boundary-Indexed Operator Families in Neural PDE Solvers
arXiv cs.AI / 3/18/2026
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Key Points
- The authors argue that neural PDE solvers do not learn a single boundary-agnostic operator; instead they implicitly learn a boundary-indexed family conditioned on the boundary-condition distribution encountered during training.
- They formalize operator learning as conditional risk minimization over boundary conditions, which leads to non-identifiability outside the training boundary support.
- Experiments on the Poisson equation show sharp degradation when boundary conditions shift and cross-distribution failures between different boundary ensembles, including convergence to conditional expectations when boundary information is removed.
- The work highlights the need for explicit boundary-aware modeling to enable robust foundation models for PDEs and clarifies core limitations of current neural PDE solvers.
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