Journal of Computational Dynamics (JCD)

Kernel methods for the approximation of some key quantities of nonlinear systems
Page number are going to be assigned later 2017

doi:10.3934/jcd.2017001      Abstract        References        Full text (429.7K)      

Jake Bouvrie - Laboratory for Computational and Statistical Learning, Massachusetts Institute of Technology, Cambridge, MA, United States (email)
Boumediene Hamzi - Department of Mathematics, AlFaisal University, Riyadh, Saudi Arabia (email)

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