Journal of Frontiers of Computer Science and Technology ›› 2023, Vol. 17 ›› Issue (9): 2047-2074.DOI: 10.3778/j.issn.1673-9418.2211113

• Frontiers·Surveys • Previous Articles     Next Articles

Review of Deep Reinforcement Learning in Latent Space

ZHAO Tingting, SUN Wei, CHEN Yarui, WANG Yuan, YANG Jucheng   

  1. College of Artificial Intelligence, Tianjin University of Science and Technology, Tianjin 300457, China
  • Online:2023-09-01 Published:2023-09-01

潜在空间中深度强化学习方法研究综述

赵婷婷,孙威,陈亚瑞,王嫄,杨巨成   

  1. 天津科技大学 人工智能学院,天津 300457

Abstract: Deep reinforcement learning (DRL) is an effective learning paradigm to realize general artificial intelligence, and has achieved remarkable achievements in a series of real-world applications. However, deep reinforcement learning has some challenges, such as generalization capability and sample efficiency. Representation learning based on deep neural networks can effectively alleviate the above problems by learning the underlying structure of the environment. Therefore, latent space based deep reinforcement learning has become the popular method in this field. A systematic review is conducted on the research progress of representation learning based on latent space in deep reinforcement learning. Existing methods of deep reinforcement learning based on latent space are analyzed and summarized, and they are categorized into state representation, action representation, and dynamics model in the latent space. Within the state representation in the latent space, it is further divided into methods based on reconstruction, methods based on mutual imitation equivalence, and other state representation methods. Finally, successful applications of deep reinforcement learning based on latent space in areas such as gaming, intelligent control, recommendation systems, and other domains are presented, followed by a brief discussion on the future development trends in this field.

Key words: reinforcement learning, deep learning, latent space, state representation, action representation

摘要: 深度强化学习(DRL)是实现通用人工智能的一种有效学习范式,已在一系列实际应用中取得了显著成果。然而,DRL存在泛化性能差、样本效率低等问题。基于深度神经网络的表示学习通过学习环境的底层结构,能够有效缓解上述问题。因此,基于潜在空间的深度强化学习成为该领域的主流方法。系统地综述了基于潜在空间的表示学习在深度强化学习中的研究进展,分析并总结了现有基于潜在空间的深度强化学习的方法,将其分为潜在空间中的状态表示、动作表示以及动力学模型进行详细阐述。其中,潜在空间中的状态表示又被分为基于重构方式的状态表示方法、基于互模拟等价的状态表示方法及其他状态表示方法。最后,列举了现有基于潜在空间的强化学习在游戏领域、智能控制领域、推荐领域及其他领域的成功应用,并浅谈了该领域的未来发展趋势。

关键词: 强化学习, 深度学习, 潜在空间, 状态表示, 动作表示