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Applied Stochastic Analysis

About this Title

Weinan E, Princeton University, Princeton, NJ, Tiejun Li, Peking University, Beijing, China and Eric Vanden-Eijnden, Courant Institute of Mathematical Sciences, New York, NY

Publication: Graduate Studies in Mathematics
Publication Year: 2019; Volume 199
ISBNs: 978-1-4704-4933-9 (print); 978-1-4704-5241-4 (online)
DOI: https://doi.org/10.1090/gsm/199
MathSciNet review: MR3932086
MSC: Primary 60-01; Secondary 60Fxx, 60H10, 60H30, 60J22, 65Cxx, 82-01

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