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Computational Inference in Dynamical Systems


General information

The aim of this course is to provide an introduction to the theory and application of computational methods for inference in dynamical systems. More specifically, the computational methods we are referring to are sequential Monte Carlo (SMC) methods (particle filters and particle smoothers) for nonlinear state inference problems and expectation maximisation (EM) and Markov chain Monte Carlo (MCMC) methods for nonlinear system identification.

Links to details

This course is currently under development and as part of this development process I offer the course at various universities around the world. Links to the various editions are available here:

KTH, Stockholm, Sweden, November 2012, home page.
USYD, Sydney, Australia, October 2012, home page.
VUB, Brussels, Belgium, June 2012, home page.
Thomas Schön

Associate Professor in Automatic Control

Phone:
+46 13 281373
Mobile (private):
+46 735 933 887
E-mail:
schon_at_isy.liu.se
Address:
Dept. of Electrical Engineering
Linköping University
SE-581 83 Linköping
Sweden
Visiting Address:
Campus Valla
Building B
Room 2A:NNN (in the A corridor on the ground floor between entrance 25 and 27)


Page responsible: Thomas Schön
Last updated: 2012-10-13