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Reinforcement Learning by KFM Probabilistic Associative Memory Based on Weights Distribution and Area Neuron Increase and Decrease

机译:基于权重分布和区域神经元增减的KFM概率联想记忆强化学习

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In this paper, we propose a reinforcement learning method using Kohonen Feature Map Probabilistic Associative Memory based on Weights Distribution and Area Neuron and Increase and Decrease (KFMPAM-WD-NID). The proposed method is based on the actor-critic method, and the actor is realized by the KFMPAM-WD-NID. The KFMPAM-WD-NID is based on the self-organizing feature map, and it can realize successive learning and one-to-many associations. Moreover, the weights distribution in the Map Layer can be modified by the increase and decrease of neurons in each area. The proposed method makes use of these properties in order to realize the learning during the practice of task. We carried out a series of computer experiments, and confirmed the effectiveness of the proposed method in the pursuit problem.
机译:在本文中,我们提出了一种基于Kohonen特征图概率联想记忆的增强学习方法,该方法基于权重分布和区域神经元以及增减(KFMPAM-WD-NID)。所提出的方法是基于actor-critic方法的,而actor是通过KFMPAM-WD-NID实现的。 KFMPAM-WD-NID基于自组织特征图,可以实现连续学习和一对多关联。此外,可以通过每个区域中神经元的增加和减少来修改地图层中的权重分布。所提出的方法利用这些特性来实现在任务练习中的学习。我们进行了一系列的计算机实验,并证实了该方法在跟踪问题中的有效性。

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