We analyze the per unit-time infinite horizon average cost Markov control model, subject to a total variation distance ambiguity on the controlled process conditional distribution. This stochastic optimal control problem is formulated as a minimax optimization problem in which the minimization is over the admissible set of control strategies, while the maximization is over the set of conditional distributions which are in a ball, with respect to the total variation distance, centered at a nominal distribution. We derive two new equivalent dynamic programming equations, and a new policy iteration algorithm. The main feature of the new dynamic programming equations is that the optimal control strategies are insensitive to inaccuracies or ambi...
In this paper we consider robust and risk sensitive control of discrete time finite state systems on...
In this paper we are concerned with the existence of optimal stationary policies for infinite horizo...
We consider the infinite-horizon discounted opti-mal control problem formalized by Markov De-cision ...
We analyze the per unit-time infinite horizon average cost Markov control model, subject to a total ...
This paper addresses the optimality of stochastic control strategies based on the infinite horizon a...
We analyze the infinite horizon minimax discounted cost Markov Control Model (MCM), for a class of c...
summary:This paper is related to Markov Decision Processes. The optimal control problem is to minimi...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
We consider infinite horizon stochastic dynamic programs with discounted costs and study how to use ...
In this study, we consider the infinite-horizon, discounted cost, optimal control of stochastic nonl...
We consider an optimal control problem with a deterministic finite horizon and state variable dynam...
International audienceWe investigate a model problem for optimal resource management. The problem is...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
AbstractThe time average reward for a discrete-time controlled Markov process subject to a time-aver...
For general state and action space Markov decision processes, we present sufficient conditions for t...
In this paper we consider robust and risk sensitive control of discrete time finite state systems on...
In this paper we are concerned with the existence of optimal stationary policies for infinite horizo...
We consider the infinite-horizon discounted opti-mal control problem formalized by Markov De-cision ...
We analyze the per unit-time infinite horizon average cost Markov control model, subject to a total ...
This paper addresses the optimality of stochastic control strategies based on the infinite horizon a...
We analyze the infinite horizon minimax discounted cost Markov Control Model (MCM), for a class of c...
summary:This paper is related to Markov Decision Processes. The optimal control problem is to minimi...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
We consider infinite horizon stochastic dynamic programs with discounted costs and study how to use ...
In this study, we consider the infinite-horizon, discounted cost, optimal control of stochastic nonl...
We consider an optimal control problem with a deterministic finite horizon and state variable dynam...
International audienceWe investigate a model problem for optimal resource management. The problem is...
Title: Stochastic Dynamic Programming Problems: Theory and Applications Author: Gabriel Lendel Depar...
AbstractThe time average reward for a discrete-time controlled Markov process subject to a time-aver...
For general state and action space Markov decision processes, we present sufficient conditions for t...
In this paper we consider robust and risk sensitive control of discrete time finite state systems on...
In this paper we are concerned with the existence of optimal stationary policies for infinite horizo...
We consider the infinite-horizon discounted opti-mal control problem formalized by Markov De-cision ...