Stochastic Dimension-Free Zeroth-Order Estimator for High-Dimensional and High-Order PINNs
Zhangyong Liang, Huanhuan Gao

TL;DR
This paper introduces SDZE, a novel dimension-free zeroth-order estimator that significantly reduces memory and computational complexity for high-dimensional PINNs, enabling efficient training of very large models.
Contribution
The paper proposes SDZE, a unified framework combining CRNS and matrix-free subspace projection to achieve dimension-independent complexity in high-dimensional PINNs.
Findings
SDZE enables training of 10-million-dimensional PINNs on a single GPU.
It significantly improves speed and memory efficiency over existing methods.
Empirical results validate the effectiveness of SDZE in high-dimensional PDE problems.
Abstract
Physics-Informed Neural Networks (PINNs) for high-dimensional and high-order partial differential equations (PDEs) are primarily constrained by the spatial derivative complexity and the memory overhead of backpropagation (BP). While randomized spatial estimators successfully reduce the spatial complexity to , their reliance on first-order optimization still leads to prohibitive memory consumption at scale. Zeroth-order (ZO) optimization offers a BP-free alternative; however, naively combining randomized spatial operators with ZO perturbations triggers a variance explosion of , leading to numerical divergence. To address these challenges, we propose the \textbf{S}tochastic \textbf{D}imension-free \textbf{Z}eroth-order \textbf{E}stimator (\textbf{SDZE}), a unified framework that achieves…
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