Overcoming the curse of dimensionality in the numerical approximation of high-dimensional semilinear elliptic partial differential equations
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Publication:6645961
DOI10.1007/S42985-024-00272-4MaRDI QIDQ6645961
Lukas Gonon, Arnulf Jentzen, Christian Beck
Publication date: 29 November 2024
Published in: SN Partial Differential Equations and Applications (Search for Journal in Brave)
Monte Carlo methodsnumerical analysissemilinear elliptic partial differential equationsfull-history recursive multilevel Picard approximations
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