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Neural Interpretable PDEs: Harmonizing Fourier Insights with Attention for Scalable and Interpretable Physics Discovery

About

Attention mechanisms have emerged as transformative tools in core AI domains such as natural language processing and computer vision. Yet, their largely untapped potential for modeling intricate physical systems presents a compelling frontier. Learning such systems often entails discovering operators that map between functional spaces using limited instances of function pairs -- a task commonly framed as a severely ill-posed inverse PDE problem. In this work, we introduce Neural Interpretable PDEs (NIPS), a novel neural operator architecture that builds upon and enhances Nonlocal Attention Operators (NAO) in both predictive accuracy and computational efficiency. NIPS employs a linear attention mechanism to enable scalable learning and integrates a learnable kernel network that acts as a channel-independent convolution in Fourier space. As a consequence, NIPS eliminates the need to explicitly compute and store large pairwise interactions, effectively amortizing the cost of handling spatial interactions into the Fourier transform. Empirical evaluations demonstrate that NIPS consistently surpasses NAO and other baselines across diverse benchmarks, heralding a substantial leap in scalable, interpretable, and efficient physics learning. Our code and data accompanying this paper are available at https://github.com/fishmoon1234/Nonlocal-Attention-Operator.

Ning Liu, Yue Yu• 2025

Related benchmarks

TaskDatasetResultRank
Partial Differential Equation SolvingKSE 1D (Case E1)
Relative L2 Error0.0296
12
Partial Differential Equation SolvingBurgers Case E6 2D
Relative L2 Error0.3906
12
Partial Differential Equation SolvingBurgers Case E8 Mixed BC
Relative L2 Error0.548
12
Partial Differential Equation SolvingNSE Case E5 10^-5, f2
Relative L2 Error5.3046
12
Partial Differential Equation SolvingNSE Case E2 10^-4, f1
Relative L2 Error0.2974
11
Partial Differential Equation SolvingNSE Case E3 10^-5, f1
Relative L2 Error0.6123
11
Partial Differential Equation SolvingNSE 10^-4, f2 (E4)
Relative L2 Error0.549
11
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