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Network Parameter Setting for Reinforcement Learning Approaches Using Neural Networks

机译:使用神经网络的强化学习方法的网络参数设置

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摘要

Reinforcement learning approaches are attracting attention as a technique for constructing a trial-and-error mapping function between sensors and motors of an autonomous mobile robot. Conventional reinforcement learning approaches use a look-up table to express the mapping function between grid state and grid action spaces. The grid size greatly adversely affects the learning performance of reinforcement learning algorithms. To avoid this, researchers have proposed reinforcement learning algorithms using neural networks to express the mapping function between continuous state space and action. A designer, however, must set the number of middle neurons and initial values of weight parameters appropriately to improve the approximate accuracy of neural networks. This paper proposes a new method that automatically sets the number of middle neurons and initial values of weight parameters based on the dimension number of the sensor space. The feasibility of proposed method is demonstrated using an autonomous mobile robot navigation problem and is evaluated by comparing it with two types of Q-learning as follows: Q-learning using RBF networks and Q-learning using neural networks whose parameters are set by a designer.
机译:强化学习方法作为一种在自动移动机器人的传感器和电机之间构建试错映射功能的技术引起了人们的关注。常规的强化学习方法使用查找表来表达网格状态与网格动作空间之间的映射函数。网格大小极大地影响了强化学习算法的学习性能。为了避免这种情况,研究人员提出了使用神经网络的强化学习算法,以表达连续状态空间与动作之间的映射函数。但是,设计人员必须适当设置中间神经元的数量和权重参数的初始值,以提高神经网络的近似精度。本文提出了一种新方法,该方法根据传感器空间的维数自动设置中神经元的数量和权重参数的初始值。通过自主移动机器人导航问题证明了该方法的可行性,并通过与以下两种类型的Q学习进行比较进行了评估:使用RBF网络的Q学习和使用由设计者设置参数的神经网络的Q学习。

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