We study the complexity of central controller synthesis problems for finite-state Markov decision processes, where the objective is to optimize both the expected mean-payoff performance of the system and its stability. e argue that the basic theoretical notion of expressing the stability in terms of the variance of the mean-payoff (called global variance in our paper) is not always sufficient, since it ignores possible instabilities on respective runs. For this reason we propose alernative definitions of stability, which we call local and hybrid variance, and which express how rewards on each run deviate from the run's own mean-payoff and from the expected mean-payoff, respectively. We show that a strategy ensuring both the expected mean-pa...
We consider Markov decision processes (MDPs) with multiple limit-average (ormean-payoff) objectives....
This paper focuses on the so called controller synthesis problem, which addresses the question of ho...
Time-average Markov decision problems are considered for the finite state and action spaces. Several...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
AbstractWe study controller synthesis problems for finite-state Markov decision processes, where the...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We consider finite horizon Markov decision processes under performance measures that involve both th...
We consider finite horizon Markov decision processes under performance measures that involve both th...
In this note, we consider discrete-time Markov decision processes with finite state space. Recalling...
Abstract. We study the problem of effective controller synthesis for finite-state Markov decision pr...
We study Markov decision processes (MDPs) with multiple limit-average (or mean-payoff) functions. We...
We consider Markov decision processes (MDPs) with multiple limit-average (ormean-payoff) objectives....
This paper focuses on the so called controller synthesis problem, which addresses the question of ho...
Time-average Markov decision problems are considered for the finite state and action spaces. Several...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
We study the complexity of central controller synthesis problems for finite-state Markov decision pr...
AbstractWe study controller synthesis problems for finite-state Markov decision processes, where the...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We study controller synthesis problems for finite-state Markov decision processes, where the objecti...
We consider finite horizon Markov decision processes under performance measures that involve both th...
We consider finite horizon Markov decision processes under performance measures that involve both th...
In this note, we consider discrete-time Markov decision processes with finite state space. Recalling...
Abstract. We study the problem of effective controller synthesis for finite-state Markov decision pr...
We study Markov decision processes (MDPs) with multiple limit-average (or mean-payoff) functions. We...
We consider Markov decision processes (MDPs) with multiple limit-average (ormean-payoff) objectives....
This paper focuses on the so called controller synthesis problem, which addresses the question of ho...
Time-average Markov decision problems are considered for the finite state and action spaces. Several...