On the influence of over-parameterization in manifold based surrogates and deep neural operators
Katiana Kontolati, Somdatta Goswami, Michael D. Shields, George Em, Karniadakis

TL;DR
This paper compares manifold-based polynomial chaos expansion and deep neural operators in modeling complex, non-smooth physico-chemical processes, highlighting how over-parameterization affects their generalization and accuracy.
Contribution
It introduces an extension of m-PCE with latent space mapping and weight self-adaptivity in DeepONet, providing new insights into over-parameterization effects on these models.
Findings
DeepONet outperforms m-PCE for highly non-smooth dynamics.
Modest over-parameterization improves m-PCE generalization.
Highly over-parameterized DeepONet enhances accuracy and robustness.
Abstract
Constructing accurate and generalizable approximators for complex physico-chemical processes exhibiting highly non-smooth dynamics is challenging. In this work, we propose new developments and perform comparisons for two promising approaches: manifold-based polynomial chaos expansion (m-PCE) and the deep neural operator (DeepONet), and we examine the effect of over-parameterization on generalization. We demonstrate the performance of these methods in terms of generalization accuracy by solving the 2D time-dependent Brusselator reaction-diffusion system with uncertainty sources, modeling an autocatalytic chemical reaction between two species. We first propose an extension of the m-PCE by constructing a mapping between latent spaces formed by two separate embeddings of input functions and output QoIs. To enhance the accuracy of the DeepONet, we introduce weight self-adaptivity in the loss…
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Taxonomy
TopicsModel Reduction and Neural Networks · Protein Structure and Dynamics · Probabilistic and Robust Engineering Design
