学习函数空间的标准正交基 / Learning Orthonormal Bases for Function Spaces
1️⃣ 一句话总结
本文提出了一种用神经网络学习并优化函数空间中的标准正交基的新方法,通过将基变换建模为李群上的连续路径并利用有限秩生成器驱动常微分方程,从而让基能够适应特定问题或数据集,例如从傅里叶基自动变换到函数数据的主成分或线性算子的特征函数。
Infinite-dimensional orthonormal basis expansions play a central role in representing and computing with function spaces due to their favorable linear algebraic properties. However, common bases such as Fourier or wavelets are fixed and do not adapt to the structure of a given problem or dataset. In this paper, we aim to represent these bases with neural networks and optimize them. Our key idea is that any target infinite-dimensional orthonormal basis can be viewed either as a point on the Lie manifold of the orthogonal group, or equivalently, as the endpoint of a continuous path on that manifold that connects a reference basis, e.g. Fourier, to that target. Paths on the Lie manifold satisfy ordinary differential equations (ODEs) governed by skew-adjoint integral operators. Using neural networks to define finite-rank generators of such ODEs allows us to parameterize and optimize orthonormal bases in function space. While relying on finite-rank generators to model infinite operators might seem restrictive, we prove a universality result: even with a rank-2 generator, the integrated solutions of the ODE are dense in the orthogonal group under the appropriate operator topology. In other words, for any target orthonormal basis, there exists a path originating from a reference basis and driven by finite-rank generators that gets arbitrarily close to that target basis. We demonstrate the flexibility of our framework by transforming the Fourier basis into the principal components of a functional dataset, eigenfunctions of linear operators, or dynamic modes of energy-preserving physical simulations.
学习函数空间的标准正交基 / Learning Orthonormal Bases for Function Spaces
本文提出了一种用神经网络学习并优化函数空间中的标准正交基的新方法,通过将基变换建模为李群上的连续路径并利用有限秩生成器驱动常微分方程,从而让基能够适应特定问题或数据集,例如从傅里叶基自动变换到函数数据的主成分或线性算子的特征函数。
源自 arXiv: 2605.19959