AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable state space and reward set. The objective is to find a policy which minimizes the probability (risk) that the total discounted rewards do not exceed a specified value (target). In this sort of model, the decision made by the decision maker depends not only on system's states, but also on his target values. By introducing the decision-maker's state, we formulate a framework for minimizing risk models. The policies discussed depend on target values and the rewards may be arbitrary real numbers. For the finite horizon model, the main results obtained are: (i) The optimal value functions are distribution functions of the target, (ii) there exists...
Bounded parameter Markov Decision Processes (BMDPs) address the issue of dealing with uncertainty in...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...
AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable ...
AbstractWe consider the minimizing risk problems in discounted Markov decisions processes with count...
This paper analyzes a connection between risk-sensitive and minimax criteria for discrete-time, fini...
We consider multistage decision processes where criterion function is an expectation of minimum func...
We consider a discrete time Markov Decision Process with infinite horizon. The criterion to be maxim...
AbstractThis paper deals with a discrete time Markov decision model with a finite state space, arbit...
We apply the Target Value Criterion to an MDP with a random planning horizon, derive an optimality e...
We shall be concerned with the optimization problem of semi-Markov decision processes with countable...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
This paper considers Markov decision processes (MDPs) with unbounded rates, as a function of state. ...
A Markov decision process (MDP) relies on the notions of state, describing the current situation of ...
Abstract. Bounded parameter Markov Decision Processes (BMDPs) address the issue of dealing with unce...
Bounded parameter Markov Decision Processes (BMDPs) address the issue of dealing with uncertainty in...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...
AbstractThis paper studies the minimizing risk problems in Markov decision processes with countable ...
AbstractWe consider the minimizing risk problems in discounted Markov decisions processes with count...
This paper analyzes a connection between risk-sensitive and minimax criteria for discrete-time, fini...
We consider multistage decision processes where criterion function is an expectation of minimum func...
We consider a discrete time Markov Decision Process with infinite horizon. The criterion to be maxim...
AbstractThis paper deals with a discrete time Markov decision model with a finite state space, arbit...
We apply the Target Value Criterion to an MDP with a random planning horizon, derive an optimality e...
We shall be concerned with the optimization problem of semi-Markov decision processes with countable...
The classical optimal control problems for discrete-time, transient Markov processes are infinite ho...
This paper considers Markov decision processes (MDPs) with unbounded rates, as a function of state. ...
A Markov decision process (MDP) relies on the notions of state, describing the current situation of ...
Abstract. Bounded parameter Markov Decision Processes (BMDPs) address the issue of dealing with unce...
Bounded parameter Markov Decision Processes (BMDPs) address the issue of dealing with uncertainty in...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...
Consider a Markov decision process with countable state space S and finite action space A. If in sta...