Title of article
Stochastic approximations of constrained discounted Markov decision processes
Author/Authors
Dufour، نويسنده , , François and Prieto-Rumeau، نويسنده , , Tomلs، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2014
Pages
24
From page
856
To page
879
Abstract
We consider a discrete-time constrained Markov decision process under the discounted cost optimality criterion. The state and action spaces are assumed to be Borel spaces, while the cost and constraint functions might be unbounded. We are interested in approximating numerically the optimal discounted constrained cost. To this end, we suppose that the transition kernel of the Markov decision process is absolutely continuous with respect to some probability measure μ. Then, by solving the linear programming formulation of a constrained control problem related to the empirical probability measure μ n of μ, we obtain the corresponding approximation of the optimal constrained cost. We derive a concentration inequality which gives bounds on the probability that the estimation error is larger than some given constant. This bound is shown to decrease exponentially in n. Our theoretical results are illustrated with a numerical application based on a stochastic version of the Beverton–Holt population model.
Keywords
Constrained Markov decision processes , Linear programming approach to control problems , Approximation of Markov decision processes
Journal title
Journal of Mathematical Analysis and Applications
Serial Year
2014
Journal title
Journal of Mathematical Analysis and Applications
Record number
1564353
Link To Document