Solving for high-dimensional committor functions using artificial neural networks
Publication
, Journal Article
Khoo, Y; Lu, J; Ying, L
Published in: Research in Mathematical Sciences
January 1, 2019
In this note we propose a method based on artificial neural network to study the transition between states governed by stochastic processes. In particular, we aim for numerical schemes for the committor function, the central object of transition path theory, which satisfies a high-dimensional Fokker–Planck equation. By working with the variational formulation of such partial differential equation and parameterizing the committor function in terms of a neural network, approximations can be obtained via optimizing the neural network weights using stochastic algorithms. The numerical examples show that moderate accuracy can be achieved for high-dimensional problems.
Duke Scholars
Published In
Research in Mathematical Sciences
DOI
EISSN
2197-9847
ISSN
2522-0144
Publication Date
January 1, 2019
Volume
6
Issue
1
Citation
APA
Chicago
ICMJE
MLA
NLM
Khoo, Y., Lu, J., & Ying, L. (2019). Solving for high-dimensional committor functions using artificial neural networks. Research in Mathematical Sciences, 6(1). https://doi.org/10.1007/s40687-018-0160-2
Khoo, Y., J. Lu, and L. Ying. “Solving for high-dimensional committor functions using artificial neural networks.” Research in Mathematical Sciences 6, no. 1 (January 1, 2019). https://doi.org/10.1007/s40687-018-0160-2.
Khoo Y, Lu J, Ying L. Solving for high-dimensional committor functions using artificial neural networks. Research in Mathematical Sciences. 2019 Jan 1;6(1).
Khoo, Y., et al. “Solving for high-dimensional committor functions using artificial neural networks.” Research in Mathematical Sciences, vol. 6, no. 1, Jan. 2019. Scopus, doi:10.1007/s40687-018-0160-2.
Khoo Y, Lu J, Ying L. Solving for high-dimensional committor functions using artificial neural networks. Research in Mathematical Sciences. 2019 Jan 1;6(1).
Published In
Research in Mathematical Sciences
DOI
EISSN
2197-9847
ISSN
2522-0144
Publication Date
January 1, 2019
Volume
6
Issue
1