Leveraging viscous Hamilton-Jacobi PDEs for uncertainty quantification in scientific machine learning
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Publication:6645133
DOI10.1137/24m1646455MaRDI QIDQ6645133
Jérôme Darbon, Paula Chen, George Em. Karniadakis, Zongren Zou, Tingwei Meng
Publication date: 28 November 2024
Published in: SIAM/ASA Journal on Uncertainty Quantification (Search for Journal in Brave)
Riccati equationBayesian inferenceuncertainty quantificationscientific machine learningmulti-time Hamilton-Jacobi PDEs
Bayesian inference (62F15) Learning and adaptive systems in artificial intelligence (68T05) Hamilton-Jacobi equations (35F21)
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