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John Harlim, Penn State University, Data-driven methods for estimating operator and parameters of dynamical systems
April 18, 2018 | 3:00 pm - 4:00 pm EDT
I will discuss a nonparametric modeling approach for forecasting stochastic dynamical systems on smooth manifolds embedded in Euclidean space. This approach allows one to evolve the probability distribution of non-trivial dynamical systems with an equation-free modeling. In the second part of this talk, I will discuss a nonparametric estimation of likelihood functions using data-driven basis functions and the theory of kernel embeddings of conditional distributions developed in the machine learning community. I will demonstrate how to use this likelihood function for Bayesian inference application.