International audienceIn this paper we study the numerical approximation of the optimal long-run average cost of a continuous-time Markov decision process, with Borel state and action spaces, and with bounded transition and reward rates. Our approach uses a suitable discretization of the state and action spaces to approximate the original control model. The approximation error for the optimal average reward is then bounded by a linear combination of coefficients related to the discretization of the state and action spaces, namely, the Wasserstein distance between an underlying probability measure μ and a measure with finite support, and the Hausdorff distance between the original and the discretized actions sets. When approximating μ with i...
We study the policy iteration algorithm (PIA) for continuous-time jump Markov decision processes in ...
The paper deals with continuous time Markov decision processes on a fairly general state space. The ...
AbstractThe paper deals with continuous time Markov decision processes on a fairly general state spa...
In this paper we study the numerical approximation of the optimal long-run average cost of a continu...
In this paper, we propose an approach for approximating the value function and an ϵ-optimal policy o...
International audienceThis paper deals with a continuous-time Markov decision process M, with Borel ...
AbstractThis paper deals with the average expected reward criterion for continuous-time Markov decis...
We consider a discrete-time Markov decision process with Borel state and action spaces, and possibly...
This paper deals with continuous-time Markov decision processes with the unbounded transition rates ...
summary:The present paper studies the approximate value iteration (AVI) algorithm for the average co...
summary:This paper deals with continuous-time Markov decision processes with the unbounded transitio...
In this work, we deal with a discrete-time infinite horizon Markov decision process with locally com...
In this paper we consider the Markov decision process with finite state and action spaces at the cri...
In this article, we study continuous-time Markov decision processes in Polish spaces. The optimality...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
We study the policy iteration algorithm (PIA) for continuous-time jump Markov decision processes in ...
The paper deals with continuous time Markov decision processes on a fairly general state space. The ...
AbstractThe paper deals with continuous time Markov decision processes on a fairly general state spa...
In this paper we study the numerical approximation of the optimal long-run average cost of a continu...
In this paper, we propose an approach for approximating the value function and an ϵ-optimal policy o...
International audienceThis paper deals with a continuous-time Markov decision process M, with Borel ...
AbstractThis paper deals with the average expected reward criterion for continuous-time Markov decis...
We consider a discrete-time Markov decision process with Borel state and action spaces, and possibly...
This paper deals with continuous-time Markov decision processes with the unbounded transition rates ...
summary:The present paper studies the approximate value iteration (AVI) algorithm for the average co...
summary:This paper deals with continuous-time Markov decision processes with the unbounded transitio...
In this work, we deal with a discrete-time infinite horizon Markov decision process with locally com...
In this paper we consider the Markov decision process with finite state and action spaces at the cri...
In this article, we study continuous-time Markov decision processes in Polish spaces. The optimality...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
We study the policy iteration algorithm (PIA) for continuous-time jump Markov decision processes in ...
The paper deals with continuous time Markov decision processes on a fairly general state space. The ...
AbstractThe paper deals with continuous time Markov decision processes on a fairly general state spa...