In recent years some researchers have explored the use of reinforcement learning (RL) algorithms as key components in the solution of various natural language processing tasks. For instance, some of these algorithms leveraging deep neural learning have found their way into conversational systems. This paper reviews the state of the art of RL methods for their possible use for different problems of natural language processing, focusing primarily on conversational systems, mainly due to their growing relevance. We provide detailed descriptions of the problems as well as discussions of why RL is well-suited to solve them. Also, we analyze the advantages and limitations of these methods. Finally, we elaborate on promising research directions in natural language processing that might benefit from reinforcement learning.
翻译:近年来,一些研究人员探索了使用强化学习算法作为解决各种自然语言处理任务的关键组成部分的问题,例如,利用深层神经学习的一些算法已经进入了对话系统,本文件回顾了这些算法可能用于自然语言处理不同问题的先进方法,主要侧重于对话系统,主要因为其相关性日益增强。我们详细描述了这些问题,并讨论了为什么RL很适合解决这些问题。我们分析了这些方法的优点和局限性。最后,我们阐述了自然语言处理的有希望的研究方向,这些方向可能受益于强化学习。