This paper proposes reinforcement learning as a foundational stone of a framework for efficient spectrum usage in the context of nextgeneration mobile cellular networks. The objective of the framework is to efficiently use the spectrum in a cellular orthogonal frequency-division multiple access network while unnecessary spectrum is released for secondary spectrum usage within a private commons spectrum accessmodel. Numerical results show that the proposed framework obtains the best performance compared with other approaches for spectrum assignment. Moreover, the framework is relatively simple to implement in terms of computational requirements and signaling overhead
This paper examines the application of reinforcement learning to a wireless communication problem. ...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
Abstract—This paper presents a novel distributed framework to decide the spectrum assignment in a pr...
This paper proposes a Dynamic Spectrum Assignment strategy in the context of next generation multic...
Abstract—This paper proposes a Dynamic Spectrum Assign-ment strategy in the context of next generati...
In this work the feasibility of Reinforcement Learning (RL) for Dynamic Spectrum Management (DSM) i...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
This paper proposes a Self-organized Spectrum Assignment strategy in the context of next generation ...
Low use of licensed spectrum imposes a need for the advanced spectrum management for wise spectrum u...
Low use of licensed spectrum imposes a need for the advanced spectrum management for wise spectrum u...
An efficient channel allocation policy that prioritizes handoffs is an indispensable ingredient in f...
In cellular telephone systems, an important problem is to dynamically allocate the communication res...
The spectrum efficiency can be greatly enhanced by the deployment of machine-to-machine (M2M) commun...
This paper examines the application of reinforcement learning to a wireless communication problem. ...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...
This paper proposes reinforcement learning as a foundational stone of a framework for efficient spec...
Abstract—This paper presents a novel distributed framework to decide the spectrum assignment in a pr...
This paper proposes a Dynamic Spectrum Assignment strategy in the context of next generation multic...
Abstract—This paper proposes a Dynamic Spectrum Assign-ment strategy in the context of next generati...
In this work the feasibility of Reinforcement Learning (RL) for Dynamic Spectrum Management (DSM) i...
Abstract—This paper examines how flexible cellular system architectures and efficient spectrum manag...
This paper proposes a Self-organized Spectrum Assignment strategy in the context of next generation ...
Low use of licensed spectrum imposes a need for the advanced spectrum management for wise spectrum u...
Low use of licensed spectrum imposes a need for the advanced spectrum management for wise spectrum u...
An efficient channel allocation policy that prioritizes handoffs is an indispensable ingredient in f...
In cellular telephone systems, an important problem is to dynamically allocate the communication res...
The spectrum efficiency can be greatly enhanced by the deployment of machine-to-machine (M2M) commun...
This paper examines the application of reinforcement learning to a wireless communication problem. ...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...
In cognitive radio (CR) networks, the cognition cycle, i.e., the ability of wireless transceivers to...