AbstractThis paper establishes a rather complete optimality theory for the average cost semi-Markov decision model with a denumerable state space, compact metric action sets and unbounded one-step costs for the case where the underlying Markov chains have a single ergotic set. Under a condition which, roughly speaking, requires the existence of a finite set such that the supremum over all stationary policies of the expected time and the total expected absolute cost incurred until the first return to this set are finite for any starting state, we shall verify the existence of a finite solution to the average costs optimality equation and the existence of an average cost optimal stationary policy
In this note, we consider semi-Markov decision processes with finite state and general multichain st...
For general state and action space Markov decision processes, we present sufficient conditions for t...
textabstractIn this paper we investigate denumerable state semi-Markov decision chains with small in...
AbstractThis paper establishes a rather complete optimality theory for the average cost semi-Markov ...
We consider a semi-Markov decision process with arbitrary action space; the state space is the nonne...
We consider partially observable Markov decision processes with finite or count-ably infinite (core)...
We consider partially observable Markov decision processes with finite or countably infinite (core) ...
We give mild conditions for the existence of optimal solutions for a Markov decision problem with av...
This paper studies semi-Markov control models with Borel state and control spaces, and unbounded cos...
This paper presents sufficient conditions for the existence of stationary optimal policies for avera...
textabstractIn this paper we consider a (discrete-time) Markov decision chain with a denumerabloe st...
AbstractWe consider denumerable state nonhomogeneous Markov decision processes and extend results fr...
We consider denumerable state nonhomogeneous Markov decision processes and extend results from both ...
AbstractThis paper is a sequel to Kurano [1,2], in which average cost Markov decision process (MDPs)...
Considered are semi-Markov decision processes (SMDPs) with finite state and action spaces. We study ...
In this note, we consider semi-Markov decision processes with finite state and general multichain st...
For general state and action space Markov decision processes, we present sufficient conditions for t...
textabstractIn this paper we investigate denumerable state semi-Markov decision chains with small in...
AbstractThis paper establishes a rather complete optimality theory for the average cost semi-Markov ...
We consider a semi-Markov decision process with arbitrary action space; the state space is the nonne...
We consider partially observable Markov decision processes with finite or count-ably infinite (core)...
We consider partially observable Markov decision processes with finite or countably infinite (core) ...
We give mild conditions for the existence of optimal solutions for a Markov decision problem with av...
This paper studies semi-Markov control models with Borel state and control spaces, and unbounded cos...
This paper presents sufficient conditions for the existence of stationary optimal policies for avera...
textabstractIn this paper we consider a (discrete-time) Markov decision chain with a denumerabloe st...
AbstractWe consider denumerable state nonhomogeneous Markov decision processes and extend results fr...
We consider denumerable state nonhomogeneous Markov decision processes and extend results from both ...
AbstractThis paper is a sequel to Kurano [1,2], in which average cost Markov decision process (MDPs)...
Considered are semi-Markov decision processes (SMDPs) with finite state and action spaces. We study ...
In this note, we consider semi-Markov decision processes with finite state and general multichain st...
For general state and action space Markov decision processes, we present sufficient conditions for t...
textabstractIn this paper we investigate denumerable state semi-Markov decision chains with small in...