Deep Reinforcement Learning (DRL) aims to create intelligent agents that can learn to solve complex problems efficiently in a real-world environment. Typically, two learning goals: adaptation and generalization are used for baselining DRL algorithm's performance on different tasks and domains. This paper presents a survey on the recent developments in DRL-based approaches for adaptation and generalization. We begin by formulating these goals in the context of task and domain. Then we review the recent works under those approaches and discuss future research directions through which DRL algorithms' adaptability and generalizability can be enhanced and potentially make them applicable to a broad range of real-world problems.
翻译:深层强化学习(DRL)旨在创造智能剂,以便学会在现实世界环境中有效解决复杂问题。通常,有两个学习目标:适应和概括化用于将DRL算法在不同任务和领域的业绩作为基准。本文对基于DRL的适应和概括化方法的最新发展进行了调查。我们首先从任务和领域的角度制定这些目标开始。然后我们审查这些方法下的最新工作,并讨论未来研究方向,通过这些方法可以提高DRL算法的适应性和普遍性,并有可能将其应用于广泛的现实世界问题。