International audienceWe propose a distributed learning algorithm for the resource allocation problem in Device-to-Device (D2D) wireless networks that takes into account the throughput estimation noise. We first formulate a stochastic optimization problem with the objective of maximizing the generalized alpha fair function of the network. In order to solve it distributively, we then define and use the framework of noisy-potential games. In this context, we propose a distributed Binary Log-linear Learning Algorithm (BLLA) that converges to a Nash Equilibrium of the resource allocation game, which is also an optimal resource allocation for the optimization problem. A key enabler for the analysis of the convergence are the proposed rules for c...
We consider the distributed channel selection problem in the context of device-to-device (D2D) commu...
We consider a wireless communication system in which there are N transmitter-receiver pairs and each...
As systems are becoming larger, it is becoming difficult to optimize them in a centralized manner du...
International audienceWe propose a distributed learning algorithm for the resource allocation proble...
International audienceWe propose a distributed learning algorithm for the resource allocation proble...
In this thesis, we address the issue of optimal design and management of wireless networks, which ha...
In this thesis, we address the issue of optimal design and management of wireless networks, which ha...
Dans cette thèse, nous abordons la question de la conception et de la gestion optimales des réseaux ...
We propose a dynamic resource allocation algorithm for device-To-device (D2D) communication underlyi...
In this paper, we present a distributed matrix exponential learning (MXL) algorithm for a wide range...
In this paper, we present a distributed matrix exponential learning (MXL) algorithm for a wide range...
We propose a dynamic resource allocation algorithm for device-to-device (D2D) communication underlyi...
We consider the distributed channel selection problem in the context of device-to-device (D2D) commu...
The full connectivity offered by the nature of wireless communication poses a vast number of benefit...
The full connectivity offered by the nature of wireless communication poses a vast number of benefit...
We consider the distributed channel selection problem in the context of device-to-device (D2D) commu...
We consider a wireless communication system in which there are N transmitter-receiver pairs and each...
As systems are becoming larger, it is becoming difficult to optimize them in a centralized manner du...
International audienceWe propose a distributed learning algorithm for the resource allocation proble...
International audienceWe propose a distributed learning algorithm for the resource allocation proble...
In this thesis, we address the issue of optimal design and management of wireless networks, which ha...
In this thesis, we address the issue of optimal design and management of wireless networks, which ha...
Dans cette thèse, nous abordons la question de la conception et de la gestion optimales des réseaux ...
We propose a dynamic resource allocation algorithm for device-To-device (D2D) communication underlyi...
In this paper, we present a distributed matrix exponential learning (MXL) algorithm for a wide range...
In this paper, we present a distributed matrix exponential learning (MXL) algorithm for a wide range...
We propose a dynamic resource allocation algorithm for device-to-device (D2D) communication underlyi...
We consider the distributed channel selection problem in the context of device-to-device (D2D) commu...
The full connectivity offered by the nature of wireless communication poses a vast number of benefit...
The full connectivity offered by the nature of wireless communication poses a vast number of benefit...
We consider the distributed channel selection problem in the context of device-to-device (D2D) commu...
We consider a wireless communication system in which there are N transmitter-receiver pairs and each...
As systems are becoming larger, it is becoming difficult to optimize them in a centralized manner du...