A reinforcement learning approach based on the fuzzy min-max neural network
作者:Aristidis Likas, Kostas Blekas
摘要
The fuzzy min-max neural network constitutes a neural architecture that is based on hyperbox fuzzy sets and can be incrementally trained by appropriately adjusting the number of hyperboxes and their corresponding volumes. Two versions have been proposed: for supervised and unsupervised learning. In this paper a modified approach is presented that is appropriate for reinforcement learning problems with discrete action space and is applied to the difficult task of autonomous vehicle navigation when no a priori knowledge of the enivronment is available. Experimental results indicate that the proposed reinforcement learning network exhibits superior learning behavior compared to conventional reinforcement schemes.
论文关键词:fuzzy min-max neural network, reinforcement learning, autonomous vehicle navigation
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论文官网地址:https://doi.org/10.1007/BF00426025