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Applying Neural Network to Reinforcement Learning in Continuous Spaces

机译:将神经网络应用于连续空间中的加固学习

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This paper is concerned with the problem of Reinforcement Learning (RL) in large or continuous spaces. Function approximation is the main method to solve such kind of problem. We propose using neural networks as function approximators in this paper. Then we experiment with three kind of neural networks in Mountain-Car task and illustrate comparisons among them. The result shows that CMAC and Fuzzy ARTMAP perform better than BP in Reinforcement Learning with Function Approximation (RLFA).
机译:本文涉及大型或连续空间中加固学习(RL)的问题。函数近似是解决此类问题的主要方法。我们提出使用神经网络作为本文的功能近似器。然后我们在山上的任务中尝试三种神经网络,并说明他们之间的比较。结果表明,CMAC和模糊ARTMAP在具有功能近似(RLFA)的加固学习中的BP比BP更好。

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