NeuralUQ: A Comprehensive Library for Uncertainty Quantification in Neural Differential Equations and Operators
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Publication:6154538
DOI10.1137/22m1518189arXiv2208.11866OpenAlexW4391652323WikidataQ128426742 ScholiaQ128426742MaRDI QIDQ6154538
Zongren Zou, Xuhui Meng, George Em. Karniadakis, Apostolos F. Psaros
Publication date: 15 February 2024
Published in: SIAM Review (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2208.11866
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