Spring 2013
CSCI 8920 -
Decision Making Under Uncertainty
Instructor: Prashant Doshi
Class times: Tue, Thurs 11:15p - 12:05p
Wed 11:00p - 12:15p
Choosing
optimally among different lines of actions is a key aspect of autonomy in
artificial agents. The process by which an agent arrives at this choice is
complex, particularly in environments that are noisy and/or shared with other
agents. This course will focus on how to make optimal and approximately optimal
decisions in multiagent settings. It will be self-contained, introducing
relevant background literature such as aspects of probability and game
theories. A tentative list of topics covered in the course is given below:
I.
Introduction
-Requirements for decision models and solutions
-Probability theory background
-Bayesian networks and Influence diagrams
II. Decision
making in single agent setting
-Markov decision processes (MDP)
-Partially observable Markov decision processes (POMDP)
-Dynamic influence diagrams
III.
Decision making in multiagent setting
-Game theory background
-Repeated strategic and Bayesian games
-Decentralized MDPs
-Partially observable Dec-MDPs (DEC-POMDPs) and
approximations
-Interactive POMDPs (I-POMDPs) and approximations
-Interactive Influence diagrams
The course
will adopt a unique pedagogical style, utilizing some classroom games to
generate intuition and reinforce instruction and presentations of research
papers by students toward the end of the course. Please contact the instructor
at pdoshi@cs.uga.edu for further questions.