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REINFORCEMENT LEARNING IN COMPLEX REAL WORLD DOMAINS: A REVIEW

机译:复杂现实世界中的钢筋学习:综述

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Reinforcement Learning is an area of Machine Learning inspired by behaviorist psychology based on the mechanism of learning from rewards. RL does not require prior knowledge and automatically get optimal policy with the help of knowledge obtained by trial-and-error and continuous interaction with the dynamic environment. In complex real world domains implementing RL algorithms is the major practical problem due to the large and continuous space. It can give rise to problems like Curse of Dimensionality, Partial Observability Problem, Credit Structuring Problem, Generalization and Exploration-Exploitation Dilemma. This paper gives an introduction to Reinforcement Learning, discusses its basic model and system structure, and discusses the problems faced while implementing RL algorithms in complex real world domains. At last but not the least this paper briefly describes the techniques which can make the working of RL process easier in the complex domains. It concludes with research scope of RL in complex real world.
机译:强化学习是机器学习的一个领域,受奖励于基于学习机制的行为主义心理学的启发。 RL不需要先验知识,而可以通过反复试验以及与动态环境的持续交互获得的知识自动获得最佳策略。在现实世界中,由于空间大而连续,实现RL算法是主要的实际问题。它会引起诸如维度诅咒,局部可观性问题,信用结构问题,泛化和勘探开发困境等问题。本文介绍了强化学习,讨论了强化学习的基本模型和系统结构,并讨论了在复杂的实际领域中实现RL算法时遇到的问题。最后但并非最不重要的一点是,本文简要介绍了可以使RL流程在复杂域中更轻松地工作的技术。总结了复杂现实世界中RL的研究范围。

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