Deep Neural Networks Are Effective At Learning High-Dimensional Hilbert-Valued Functions From Limited Data
Ben Adcock, Simone Brugiapaglia, Nick Dexter, Sebastian, Moraga

TL;DR
This paper investigates the capability of deep neural networks to learn high-dimensional Hilbert-valued functions, providing theoretical guarantees and practical insights for applications like parametric PDEs with limited data.
Contribution
It introduces a novel theoretical framework for DNN training on Hilbert-valued functions with explicit error and sample complexity bounds, and explores practical architecture modifications for improved performance.
Findings
Theoretical error bounds match current best-in-class schemes.
DNNs can effectively approximate Hilbert-valued functions under certain conditions.
Preliminary numerical results show competitive performance on parametric PDEs.
Abstract
Accurate approximation of scalar-valued functions from sample points is a key task in computational science. Recently, machine learning with Deep Neural Networks (DNNs) has emerged as a promising tool for scientific computing, with impressive results achieved on problems where the dimension of the data or problem domain is large. This work broadens this perspective, focusing on approximating functions that are Hilbert-valued, i.e. take values in a separable, but typically infinite-dimensional, Hilbert space. This arises in science and engineering problems, in particular those involving solution of parametric Partial Differential Equations (PDEs). Such problems are challenging: 1) pointwise samples are expensive to acquire, 2) the function domain is high dimensional, and 3) the range lies in a Hilbert space. Our contributions are twofold. First, we present a novel result on DNN training…
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Taxonomy
TopicsModel Reduction and Neural Networks · Probabilistic and Robust Engineering Design · Neural Networks and Applications
