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Chapitre D'ouvrage Année : 2021

Reinforcement Learning for Physical Layer Communications

Résumé

In this chapter, we will give comprehensive examples of applying RL in optimizing the physical layer of wireless communications by defining different class of problems and the possible solutions to handle them. In Section 9.2, we present all the basic theory needed to address a RL problem, i.e. Markov decision process (MDP), Partially observable Markov decision process (POMDP), but also two very important and widely used algorithms for RL, i.e. the Q-learning and SARSA algorithms. We also introduce the deep reinforcement learning (DRL) paradigm and the section ends with an introduction to the multi-armed bandits (MAB) framework. Section 9.3 focuses on some toy examples to illustrate how the basic concepts of RL are employed in communication systems. We present applications extracted from literature with simplified system models using similar notation as in Section 9.2 of this Chapter. In Section 9.3, we also focus on modeling RL problems, i.e. how action and state spaces and rewards are chosen. The Chapter is concluded in Section 9.4 with a prospective thought on RL trends and it ends with a review of a broader state of the art in Section 9.5.
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Dates et versions

hal-03263888 , version 1 (21-06-2021)
hal-03263888 , version 2 (13-07-2021)

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Philippe Mary, Visa Koivunen, Christophe Moy. Reinforcement Learning for Physical Layer Communications. Machine Learning and Wireless Communications, inPress. ⟨hal-03263888v2⟩
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