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Do Neural Operators Forget Geometry? The Forgetting Hypothesis in Deep Operator Learning

Machine Learning 2026-05-08 v1

Abstract

Neural operators perform well on structured domains, yet their behaviour on irregular geometries remains poorly understood. We show that this limitation is not merely an encoding issue, but a depth-wise failure mode inherent to deep operator architectures. We formalise the Geometric Forgetting Hypothesis: due to the Markovian structure of operator layers and their reliance on global mixing mechanisms, neural operators progressively lose access to domain geometry as depth increases. Using layer-wise geometric probing, we demonstrate that both spectral and attention-based operators systematically lose geometric fidelity. We show that this geometric forgetting degrades accuracy, stability, and generalisation. To counteract it, we introduce a lightweight geometry memory injection mechanism that restores geometric constraints at intermediate depths with minimal architectural overhead. This simple intervention consistently mitigates forgetting and exposes a geometric shortcut instability in transformer-based operators, revealing that geometric retention is a structural requirement rather than a design choice.

Keywords

Cite

@article{arxiv.2605.05862,
  title  = {Do Neural Operators Forget Geometry? The Forgetting Hypothesis in Deep Operator Learning},
  author = {Yanming Xia and Angelica I. Aviles-Rivero},
  journal= {arXiv preprint arXiv:2605.05862},
  year   = {2026}
}
R2 v1 2026-07-01T12:54:23.539Z