Neural Chaos: A Spectral Stochastic Neural Operator
Bahador Bahmani, Ioannis G. Kevrekidis, Michael D. Shields

TL;DR
This paper introduces a neural spectral stochastic operator that replaces polynomial basis functions with neural networks in spectral expansions, enabling flexible and data-driven uncertainty quantification for complex stochastic models.
Contribution
It proposes a novel neural basis function approach for spectral expansions that is data-driven, flexible, and does not require assumptions about variable independence or complex tensor structures.
Findings
Effective in modeling complex stochastic processes
Outperforms classical PCE in high-dimensional cases
Simplifies implementation for dependent variables
Abstract
Building surrogate models with uncertainty quantification capabilities is essential for many engineering applications where randomness, such as variability in material properties, is unavoidable. Polynomial Chaos Expansion (PCE) is widely recognized as a to-go method for constructing stochastic solutions in both intrusive and non-intrusive ways. Its application becomes challenging, however, with complex or high-dimensional processes, as achieving accuracy requires higher-order polynomials, which can increase computational demands and or the risk of overfitting. Furthermore, PCE requires specialized treatments to manage random variables that are not independent, and these treatments may be problem-dependent or may fail with increasing complexity. In this work, we adopt the spectral expansion formalism used in PCE; however, we replace the classical polynomial basis functions with neural…
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Taxonomy
TopicsNeural Networks and Applications
MethodsADaptive gradient method with the OPTimal convergence rate
