Abstract—In this paper we propose an algorithm for dynamic spectrum access (DSA) in LTE cellular systems- distributed ICIC accelerated Q-learning (DIAQ). It combines distributed reinforcement learning (RL) and standardized inter-cell interference coordination (ICIC) signalling in the LTE downlink, using the framework of heuristically accelerated RL (HARL). Furthermore, we present a novel Bayesian network based approach to theoretical analysis of RL based DSA. It explains a predicted improvement in the convergence behaviour achieved by DIAQ, compared to classical RL. The scheme is also assessed using large scale simulations of a stadium temporary event network. Compared to a typical heuristic ICIC approach, DIAQ provides significantly better...
Abstract—This paper presents a novel distributed framework to decide the spectrum assignment in a pr...
Machine Learning approaches such as Reinforcement Learning (RL) can be used to solve problems such ...
The explosive growth of Internet-of-Things (IoT) applications such as smart cities and Industry 4.0 ...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
Abstract—This paper presents the concept of the Win-or-Learn-Fast (WoLF) variable learning rate for ...
Abstract—This paper assesses the robustness of the distributed reinforcement learning (RL) approach ...
Abstract—This paper investigates the distributed Q-learning approach to secondary LTE spectrum shari...
This thesis studies the applications of distributed reinforcement learning (RL) based machine intell...
International audienceDue to the increasing demands for higher data rate applications, also due to t...
This paper examines how novel cellular system architectures and intelligent spectrum management tech...
Tuning cellular network performance against always occurring wireless impairments can dramatically i...
International audienceIn order to achieve high data rates in future wireless packet switched cellula...
We propose a dynamic resource allocation algorithm for device-to-device (D2D) communication underlyi...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
In this paper, we propose a distributed reinforcement learning (RL) technique called distributed pow...
Abstract—This paper presents a novel distributed framework to decide the spectrum assignment in a pr...
Machine Learning approaches such as Reinforcement Learning (RL) can be used to solve problems such ...
The explosive growth of Internet-of-Things (IoT) applications such as smart cities and Industry 4.0 ...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
Abstract—This paper presents the concept of the Win-or-Learn-Fast (WoLF) variable learning rate for ...
Abstract—This paper assesses the robustness of the distributed reinforcement learning (RL) approach ...
Abstract—This paper investigates the distributed Q-learning approach to secondary LTE spectrum shari...
This thesis studies the applications of distributed reinforcement learning (RL) based machine intell...
International audienceDue to the increasing demands for higher data rate applications, also due to t...
This paper examines how novel cellular system architectures and intelligent spectrum management tech...
Tuning cellular network performance against always occurring wireless impairments can dramatically i...
International audienceIn order to achieve high data rates in future wireless packet switched cellula...
We propose a dynamic resource allocation algorithm for device-to-device (D2D) communication underlyi...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
In this paper, we propose a distributed reinforcement learning (RL) technique called distributed pow...
Abstract—This paper presents a novel distributed framework to decide the spectrum assignment in a pr...
Machine Learning approaches such as Reinforcement Learning (RL) can be used to solve problems such ...
The explosive growth of Internet-of-Things (IoT) applications such as smart cities and Industry 4.0 ...