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Learning Stochastic Dynamics with Statistics-Informed Neural Network

Learning Stochastic Dynamics with Statistics-Informed Neural Network

24 February 2022
Yuanran Zhu
Yunhao Tang
Changho Kim
ArXivPDFHTML

Papers citing "Learning Stochastic Dynamics with Statistics-Informed Neural Network"

10 / 10 papers shown
Title
A Robust Model-Based Approach for Continuous-Time Policy Evaluation with Unknown Lévy Process Dynamics
A Robust Model-Based Approach for Continuous-Time Policy Evaluation with Unknown Lévy Process Dynamics
Qihao Ye
Xiaochuan Tian
Yuhua Zhu
34
1
0
02 Apr 2025
Bridging scales in multiscale bubble growth dynamics with correlated
  fluctuations using neural operator learning
Bridging scales in multiscale bubble growth dynamics with correlated fluctuations using neural operator learning
Minglei Lu
Chensen Lin
Martian Maxey
George Karniadakis
Zhen Li
AI4CE
22
1
0
20 Mar 2024
Tipping Points of Evolving Epidemiological Networks: Machine
  Learning-Assisted, Data-Driven Effective Modeling
Tipping Points of Evolving Epidemiological Networks: Machine Learning-Assisted, Data-Driven Effective Modeling
N. Evangelou
Tianqi Cui
J. M. Bello-Rivas
Alexei Makeev
Ioannis G. Kevrekidis
17
1
0
01 Nov 2023
Learning nonlinear integral operators via Recurrent Neural Networks and
  its application in solving Integro-Differential Equations
Learning nonlinear integral operators via Recurrent Neural Networks and its application in solving Integro-Differential Equations
Hardeep Bassi
Yuanran Zhu
Senwei Liang
Jia Yin
Cian C. Reeves
Vojtěch Vlček
Chao Yang
21
6
0
13 Oct 2023
Bayesian Inverse Transition Learning for Offline Settings
Bayesian Inverse Transition Learning for Offline Settings
Leo Benac
S. Parbhoo
Finale Doshi-Velez
OffRL
11
0
0
09 Aug 2023
Probing reaction channels via reinforcement learning
Probing reaction channels via reinforcement learning
Senwei Liang
Aditya Singh
Yuanran Zhu
David T. Limmer
Chao Yang
13
6
0
27 May 2023
Learning Stochastic Dynamical System via Flow Map Operator
Learning Stochastic Dynamical System via Flow Map Operator
Yuán Chen
D. Xiu
AI4CE
8
15
0
05 May 2023
Reservoir Computing with Error Correction: Long-term Behaviors of
  Stochastic Dynamical Systems
Reservoir Computing with Error Correction: Long-term Behaviors of Stochastic Dynamical Systems
Cheng Fang
Yubin Lu
Ting Gao
Jinqiao Duan
25
4
0
01 May 2023
Learning effective stochastic differential equations from microscopic
  simulations: linking stochastic numerics to deep learning
Learning effective stochastic differential equations from microscopic simulations: linking stochastic numerics to deep learning
Felix Dietrich
Alexei Makeev
George A. Kevrekidis
N. Evangelou
Tom S. Bertalan
Sebastian Reich
Ioannis G. Kevrekidis
DiffM
18
37
0
10 Jun 2021
SPINN: Sparse, Physics-based, and partially Interpretable Neural
  Networks for PDEs
SPINN: Sparse, Physics-based, and partially Interpretable Neural Networks for PDEs
A. A. Ramabathiran
P. Ramachandran
PINN
AI4CE
27
75
0
25 Feb 2021
1