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Hierarchical Neuro-fuzzy Models Based on Reinforcement Learning for Intelligent Agents

机译:基于加固学习的智能代理商的分层神经模糊模型

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This work introduces two new neuro-fuzzy systems for intelligent agents called Reinforcement Learning - Hierarchical Neuro-Fuzzy Systems BSP (RL-HNFB) and Reinforcement Learning - Hierarchical Neuro-Fuzzy Systems Politree (RL-HNFP). By using hierarchical partitioning methods, together with the Reinforcement Learning (RL) methodology, a new class of Neuro-Fuzzy Systems (SNF) was obtained, which executes, in addition to automatically learning its structure, the autonomous learning of the actions to be taken by an agent. These characteristics have been developed in order to bypass the traditional drawbacks of neuro-fuzzy systems. The paper details the two novel RL_HNF systems and evaluates their performance in a benchmark application - the cart-centering problem. The results obtained demonstrate the capacity of the proposed models in extracting knowledge from the agent's direct interaction with large and/or continuous environments.
机译:这项工作引入了两个新的神经模糊系统,称为强化学习 - 等级神经模糊系统BSP(RL-HNFB)和强化学习 - 等级神经模糊系统Politrae(RL-HNFP)。通过使用分层分区方法,以及加强学习(RL)方法,获得了一类新的神经模糊系统(SNF),除了自动学习其结构之外,还在自动学习待采取的行动由代理人。已经开发了这些特性,以绕过神经模糊系统的传统缺点。本文详细说明了两种新型RL_HNF系统,并在基准应用中评估其性能 - 以购物车为中心问题。所获得的结果证明了所提出的模型从代理与大型和/或连续环境的直接互动提取知识的能力。

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