This paper presents a comprehensive survey of Federated Reinforcement Learning (FRL), an emerging and promising field in Reinforcement Learning (RL). Starting with a tutorial of Federated Learning (FL) and RL, we then focus on the introduction of FRL as a new method with great potential by leveraging the basic idea of FL to improve the performance of RL while preserving data-privacy. According to the distribution characteristics of the agents in the framework, FRL algorithms can be divided into two categories, i.e. Horizontal Federated Reinforcement Learning (HFRL) and Vertical Federated Reinforcement Learning (VFRL). We provide the detailed definitions of each category by formulas, investigate the evolution of FRL from a technical perspective, and highlight its advantages over previous RL algorithms. In addition, the existing works on FRL are summarized by application fields, including edge computing, communication, control optimization, and attack detection. Finally, we describe and discuss several key research directions that are crucial to solving the open problems within FRL.
翻译:本文件介绍了对联邦加强学习(FRL)的全面调查,这是加强学习(RL)中一个新兴和有希望的领域。从联邦学习(FL)和RL辅导开始,我们然后侧重于将FRL作为一种具有巨大潜力的新方法,利用FL的基本想法来改善联邦加强学习(FRL)的绩效,同时保留数据隐私。根据框架中代理商的分布特点,FRL算法可以分为两类,即横向联邦加强学习(HFRL)和纵向联邦加强学习(VFRL)。我们按公式提供每一类别的详细定义,从技术角度调查联邦加强学习的演变,并突出其相对于以前RL算法的优势。此外,FRL的现有工作按应用领域,包括边缘计算、通信、控制优化和攻击探测,加以总结。最后,我们介绍和讨论对解决联邦加强学习(FRL)内部的公开问题至关重要的若干关键研究方向。