Conformalized-DeepONet: a distribution-free framework for uncertainty quantification in deep operator networks
DOI10.1016/j.physd.2024.134418MaRDI QIDQ6669489
Guang Lin, Lu Lu, Amirhossein Mollaali, Zecheng Zhang, Christian Moya
Publication date: 22 January 2025
Published in: Physica D (Search for Journal in Brave)
dynamical systemsuncertainty quantificationquantile predictionconformal predictiontime-dependent PDEoperator learning
Artificial intelligence (68Txx) Numerical methods for partial differential equations, initial value and time-dependent initial-boundary value problems (65Mxx) Probabilistic methods, stochastic differential equations (65Cxx)
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