F. Noe, S. Olsson, J. Kohler and H. Wu, “Boltzmann generators-sampling equilibrium states of many-body systems with deep learning,”Science, (Accepted)
H. Wu and F. Noe, “Variational approach for learning markov processes from time series data,”Journal of Nonlinear Science, 2019. (Accepted)
H. Wu, F. Nuske, S. Klus, P. Koltai and F. Noe, “Variational Koopman models: Slow collective variables and molecular kinetics from short off-equilibrium simulations,”Journal of Chemical Physics, 2017, 146(15): 154104.
A. Mardt, L. Pasquali,H. Wu, F. Noe, “VAMPnets for deep learning of molecular kinetics,”Nature Communications, 2018, 9(1): 5.
S. Klus, F. Nuske, P. Koltai,H. Wu, I. Kevrekidis, C. Schutte, F. Noe, “Data-driven model reduction and transfer operator approximation,”Journal of Nonlinear Science, 2018.
F. Litzinger, L. Boninsegna,H. Wu, F. Nüske, R. Patel, R. Baraniuk, F. Noe, C. Clementi, “Rapid Calculation of Molecular Kinetics Using Compressed Sensing,” Journal of chemical theory and computation, 14(5): 2771-2783, 2018.
F. Paul, C. Wehmeyer, E. Abualrous,H. Wu, M. Crabtree, J. Schöneberg, J. Clarke, C. Freund, T. Weikl, and F. Noe, “Protein-peptide association kinetics beyond the seconds timescale from atomistic simulations,”Nature Communications, 2017, 8(1): 1095.
S. Olsson,H. Wu, F. Paul, C. Clementi and F. Noe, “Combining experimental and simulation data of molecular processes via augmented Markov models,”Proceedings of the National Academy of Sciences (PNAS), 2017, 114(31): 8265-8270.
F. Nuske,H. Wu, J.-H. Prinz, C. Clementi and F. Noe “Markov state models from short non-equilibrium simulations—Analysis and correction of estimation bias,”Journal of Chemical Physics, 2017, 146(9): 094104.
H. Wu, F. Paul, C. Wehmeyer and F. Noe, “Multiensemble Markov models of molecular thermodynamics and kinetics,”Proceedings of the National Academy of Sciences (PNAS), 2016, 113(23): E3221-E3230.
B. Trendelkamp-Schroer,H. Wu(co-first author), F. Paul and F. Noe, “Estimation and uncertainty of reversible Markov models,”Journal of Chemical Physics, 2015, 143(17): 174101.
H. Wu, J. -H. Prinz and F. Noe, “Projected metastable Markov processes and their estimation with observable operator models,”Journal of Chemical Physics, 2015, 143(14): 144101.
H. Wu, “Maximum margin clustering for state decomposition of metastable systems,”Neurocomputing2015, 164(21): 5-22.
H. Wuand F. Noe, “Gaussian Markov transition models of molecular kinetics,”Journal of Chemical Physics, 2015, 142(8): 084104.
H. Wu, A. Mey, E. Rosta and F. Noe, “Statistically optimal analysis of state-discretized trajectory data from multiple thermodynamic states,”Journal of Chemical Physics, 2014, 141(21): 214106.
H. Wuand F. Noe, “Optimal estimation of free energies and stationary densities from multiple biased simulations,”Multiscale Modeling and Simulation: A SIAM Interdisciplinary Journal, 2014, 12(1): 25-54
A. Mey,H. Wuand F. Noe, “xTRAM: Estimating equilibrium expectations from time-correlated simulation data at multiple thermodynamic states,”Physical Review X, 2014, 4(4): 041018.
F. Noe,H. Wu, J.-H. Prinz and N. Plattner, “Projected and Hidden Markov Models for calculating kinetics and metastable states of complex molecules,”Journal of Chemical Physics, 2013, 139(18): 184114.
H. Wu, F. Noe, “Bayesian framework for modeling diffusion processes with nonlinear drift based on nonlinear and incomplete observations,”Physical Review E, 2011, 83(3): 036705.
J.-H. Prinz,H. Wu, M. Sarich, etc. “Markov models of molecular kinetics: Generation and Validation,”Journal of Chemical Physics, 2011, 134(17): 174105. (Times Cited: 523)
H. Wu, F. Noe, “Probability distance based compression of hidden Markov models,”Multiscale Modeling and Simulation: A SIAM Interdisciplinary Journal, 2010, 8(5): 1838-1861.
H. Wu, F. C. Sun and H. P. Liu, “Fuzzy particle filtering for uncertain systems,”IEEE Transactions on Fuzzy Systems, 2008, 16(5): 1114-1129.