- Series
- GT-MAP Seminar
- Time
- Friday, March 9, 2018 - 3:00pm for 1 hour (actually 50 minutes)
- Location
- Skiles 006
- Speaker
- Evangelos Theodorou – GT AE – http://acds-lab.gatech.edu/
- Organizer
- Sung Ha Kang
In this talk I will present an information theoretic approach to
stochastic optimal control and inference that has advantages over
classical methodologies and theories for decision making under
uncertainty. The main idea is that there are certain connections
between optimality principles in control and information theoretic
inequalities in statistical physics that allow us to solve
hard decision making problems in robotics, autonomous systems and
beyond. There are essentially two different points of view of the same
"thing" and these two different points of view overlap for a fairly
general class of dynamical systems that undergo stochastic effects. I
will also present a holistic view of autonomy that collapses planning,
perception and control into one computational engine, and ask questions
such as how organization and structure relates to computation and
performance. The last part of my talk
includes computational frameworks for uncertainty representation and
suggests ways to incorporate these representations within decision
making and control.