The Random Feature Model for Input-Output Maps between Banach Spaces
- Creators
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Nelsen, Nicholas H.
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Stuart, Andrew M.
Abstract
Well known to the machine learning community, the random feature model is a parametric approximation to kernel interpolation or regression methods. It is typically used to approximate functions mapping a finite-dimensional input space to the real line. In this paper, we instead propose a methodology for use of the random feature model as a data-driven surrogate for operators that map an input Banach space to an output Banach space. Although the methodology is quite general, we consider operators defined by partial differential equations (PDEs); here, the inputs and outputs are themselves functions, with the input parameters being functions required to specify the problem, such as initial data or coefficients, and the outputs being solutions of the problem. Upon discretization, the model inherits several desirable attributes from this infinite-dimensional viewpoint, including mesh-invariant approximation error with respect to the true PDE solution map and the capability to be trained at one mesh resolution and then deployed at different mesh resolutions. We view the random feature model as a nonintrusive data-driven emulator, provide a mathematical framework for its interpretation, and demonstrate its ability to efficiently and accurately approximate the nonlinear parameter-to-solution maps of two prototypical PDEs arising in physical science and engineering applications: the viscous Burgers' equation and a variable coefficient elliptic equation.
Additional Information
© 2021 Society for Industrial and Applied Mathematics. Submitted to the journal's Methods and Algorithms for Scientific Computing section May 21, 2020; accepted for publication (in revised form) May 20, 2021; published electronically September 20, 2021. The work of the first author was supported by the National Science Foundation (NSF) Graduate Research Fellowship Program under award DGE-1745301. The work of the second author was supported by NSF grant DMS-1818977 and by the Office of Naval Research (ONR) through grant N00014-17-1-2079. This work was supported by NSF grant AGS-1835860 and ONR grant N00014-19-1-2408. The authors thank Bamdad Hosseini and Nikola B. Kovachki for helpful discussions and are grateful to the two anonymous referees for their careful reading and insightful comments.Attached Files
Published - 20m133957x.pdf
Submitted - 2005.10224.pdf
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Additional details
- Eprint ID
- 103482
- Resolver ID
- CaltechAUTHORS:20200527-073449881
- NSF Graduate Research Fellowship
- DGE-1745301
- NSF
- DMS-1818977
- Office of Naval Research (ONR)
- N00014-17-1-2079
- NSF
- AGS-1835860
- Office of Naval Research (ONR)
- N00014-19-1-2408
- Created
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2020-05-27Created from EPrint's datestamp field
- Updated
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2021-12-14Created from EPrint's last_modified field