In this paper we study the call admission control problem to optimize the network providers revenue guaranteeing the quality of service to the end users. We consider a network scenario where each class of service is characterized by different parameters and an associated static revenue. We formulate the problem as a Semi-Markov Decision Process, and we use a real time Reinforcement Learning algorithm. Other traditional algorithms require explicit state transition models, instead RL learns model of environment from experience. We show that RL policy provides better solution than classic policy as the greedy algorithm
Abstract. The scarcity and large fluctuations of link bandwidth in wireless networks have motivated ...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...
In this paper we study the call admission control problem to optimize the network providers revenue ...
In this paper we study the call admission control problem to optimize the network operators revenue ...
In this paper we study the call admission control problem to optimize the network operators' revenue...
In this paper we study the call admission control problem to optimize the network operators revenue ...
In this paper we study the call admission control problem to optimize the network operators' revenue...
In this paper we study the call admission control problem to optimize the network operators' revenue...
International audienceIn this paper, we address the call admission control (CAC) problem in a cellul...
Reinforcement learning is applied to admission control of self-similar call traffic in broadband net...
Abstract. We deploy a novel Reinforcement Learning optimization te-chnique based on afterstates lear...
This paper defines a reinforcement learning (RL) approach to call control algorithms in links with v...
SUMMARY We study the problem of optimizing admission control policies in mobile multimedia cellular ...
International audienceThe optimization of channel assignment in cellular networks is a very complex ...
Abstract. The scarcity and large fluctuations of link bandwidth in wireless networks have motivated ...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...
In this paper we study the call admission control problem to optimize the network providers revenue ...
In this paper we study the call admission control problem to optimize the network operators revenue ...
In this paper we study the call admission control problem to optimize the network operators' revenue...
In this paper we study the call admission control problem to optimize the network operators revenue ...
In this paper we study the call admission control problem to optimize the network operators' revenue...
In this paper we study the call admission control problem to optimize the network operators' revenue...
International audienceIn this paper, we address the call admission control (CAC) problem in a cellul...
Reinforcement learning is applied to admission control of self-similar call traffic in broadband net...
Abstract. We deploy a novel Reinforcement Learning optimization te-chnique based on afterstates lear...
This paper defines a reinforcement learning (RL) approach to call control algorithms in links with v...
SUMMARY We study the problem of optimizing admission control policies in mobile multimedia cellular ...
International audienceThe optimization of channel assignment in cellular networks is a very complex ...
Abstract. The scarcity and large fluctuations of link bandwidth in wireless networks have motivated ...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...
International audienceWe consider, in this paper, the call admission control (CAC) problem in a mult...