Title :
PAC bounds for simulation-based optimization of Markov decision processes
Author_Institution :
IBM TJ Watson Res. Center, Hawthorne
Abstract :
We generalize the PAC Learning framework for Markov decision processes developed in [18]. We consider the reward function to depend on both the state and the action. Both the state and action spaces can potentially be countably infinite. We obtain an estimate for the value function of a Markov decision process, which assigns to each policy its expected discounted reward. This expected reward can be estimated as the empirical average of the reward over many independent simulation runs. We derive bounds on the number of runs needed for the convergence of the empirical average to the expected reward uniformly for a class of policies, in terms of the V-C or pseudo dimension of the policy class. We then propose a framework to obtain an e-optimal policy from simulation. We provide sample complexity of such an approach.
Keywords :
Markov processes; convergence; optimisation; Markov decision processes; PAC learning; convergence; simulation-based optimization; Computational modeling; Convergence; Dynamic programming; Equations; Geometry; Search problems; Solid modeling; Space stations; USA Councils; Upper bound;
Conference_Titel :
Decision and Control, 2007 46th IEEE Conference on
Conference_Location :
New Orleans, LA
Print_ISBN :
978-1-4244-1497-0
Electronic_ISBN :
0191-2216
DOI :
10.1109/CDC.2007.4435050