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A Trainable-by-Parts Operator Learning Framework: Bridging DeepONet and Karhunen-Loeve Expansions for Large-Scale Applications

arXiv cs.LG · 4d ago Cached

Proposes KL-DNN, a scalable operator learning framework that uses Karhunen-Loève expansions to handle large-scale PDE problems, achieving lower errors and two-order-of-magnitude speedup over DeepONet on a 3D carbon storage problem.

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#operator-learning

Operator Learning for Cubic Nonlinear Schr\"odinger Equation on Periodic Domains

arXiv cs.LG · 5d ago Cached

This paper presents a geometry-conditioned Fourier Neural Operator (FNO) to learn the solution operator for the cubic nonlinear Schrödinger equation on periodic domains with varying aspect ratios. Numerical experiments show the model captures distinct Sobolev norm behaviors on rational and irrational tori, demonstrating geometry-aware neural operators for dispersive PDEs.

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Hierarchical Attention via Domain Decomposition

arXiv cs.LG · 2026-06-18 Cached

Proposes a hierarchical attention mechanism using overlapping Schwarz domain decomposition to replace dense global low-rank attention with a two-level additive structure of local and coarse blocks, showing faster training and better accuracy with fewer parameters.

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Physics-conforming Latent Twins

arXiv cs.LG · 2026-06-16 Cached

Physics-conforming Latent Twins is a framework for learning latent surrogate solution operators that enforce physical principles such as conservation laws and dissipative inequalities by design, using a constraint-transfer approach and structure-preserving latent dynamics.

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@BetaTomorrow: Paper: Topological Neural Operators Authors: Lennart Bastian(@lennart_bastian), Tolga Birdal(@tolga_birdal), Samuel Lev…

X AI KOLs Timeline · 2026-06-10 Cached

This paper introduces Topological Neural Operators, which lift neural operators from point-only domains to cell complexes, embedding geometry and topology to reduce the learning burden. It demonstrates that operator learning improves when geometry is not an afterthought, though the topology remains prescribed.

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Deep Embedded Multiplicative DMD for Algebra-Preserving Koopman Learning

Hugging Face Daily Papers · 2026-06-03

DeepMDMD combines deep learning with algebraic constraints to learn compact, dynamically coherent Koopman operator representations that enforce the product rule as an exact constraint. The method outperforms geometric approaches on high-dimensional chaotic and fluid dynamics problems, reducing spectral pollution and enabling stable long-term forecasting.

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Functional Attention: From Pairwise Affinities to Functional Correspondences

Hugging Face Daily Papers · 2026-05-29

Functional Attention is a novel attention mechanism that reinterprets attention as a functional correspondence between adaptive bases, replacing softmax affinities with structured linear operators inspired by geometric functional maps. The method achieves state-of-the-art performance on operator learning tasks including PDE solving and 3D segmentation while remaining resolution-invariant.

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Universal Approximation of Nonlinear Operators and Their Derivatives

arXiv cs.LG · 2026-05-18 Cached

This paper proves the first universal approximation theorems for nonlinear operators and their derivatives in infinite-dimensional settings, extending classical results to operator learning architectures like DeepONet and PCA-Net.

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UFO: A Domain-Unification-Free Operator Framework for Generalized Operator Learning

arXiv cs.LG · 2026-05-14 Cached

Introduces UFO, a cross-domain neural operator framework that adaptively learns operators across different representational domains, enabling discretization-decoupled predictions robust to distribution shifts.

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Topology-Preserving Neural Operator Learning via Hodge Decomposition

Hugging Face Daily Papers · 2026-05-13 Cached

This paper proposes a topology-preserving neural operator learning method using Hodge decomposition to separate topological and geometric components, improving accuracy and efficiency on geometric meshes.

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