Functional Attention: From Pairwise Affinities to Functional Correspondences
Abstract
Functional Attention reinterprets attention as functional correspondence between adaptive bases, enabling compact and resolution-invariant operator learning for PDE solving and 3D segmentation.
Learning mappings between infinite-dimensional function spaces, or operator learning, is essential for many machine learning applications. Although transformer-based operators are popular, they often rely on token-wise attention. These methods treat continuous fields as discrete tokens and usually ignore the global functional structure. We introduce Functional Attention, which reinterprets attention as a functional correspondence between adaptive bases. Inspired by geometric functional maps, our method replaces softmax affinities with structured linear operators. This yields a compact, generalizable, resolution-invariant representation that explicitly captures global dependencies. Experiments demonstrate that Functional Attention can match state-of-the-art performance in many operator learning tasks, including solving PDEs, 3D segmentation, and regression, while remaining robust to varying discretizations. Project page is available at https://github.com/xjffff/FUNCATTN.
Community
We propose Functional Attention (FUNCATTN), a new attention mechanism for operator learning inspired by functional maps. Instead of computing pointwise softmax affinities between tokens, we reframe attention as a compact linear operator between learned functional spaces, reducing complexity from O(n²) to O(ndk). FUNCATTN achieves SOTA on 5/6 PDE benchmarks, 3D point cloud segmentation, and OOD generalization, while remaining resolution-invariant. Accepted to ICML 2026.
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