Self Adaptive Methods for Learning Rate Parameter of Q-Learning Algorithm

Murat Erhan ÇİMEN, Zeynep GARİP, Yaprak YALÇIN, Mustafa KUTLU, Ali Fuat BOZ
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引用次数: 0

Abstract

Machine learning methods can generally be categorized as supervised, unsupervised and reinforcement learning. One of these methods, Q learning algorithm in reinforcement learning, is an algorithm that can interact with the environment and learn from the environment and produce actions accordingly. In this study, eight different on-line methods have been proposed to determine online the value of the learning parameter in the Q learning algorithm depending on different situations. In order to test the performance of the proposed methods, these algorithms are applied to Frozen Lake and Car Pole systems and the results are compared graphically and statistically. When the obtained results are examined, Method 1 has produced better performance for Frozen Lake, which is a discrete system, while Method 7 has produced better results for the Cart Pole System, which is a continuous system.
q -学习算法学习率参数的自适应方法
机器学习方法一般可以分为监督学习、无监督学习和强化学习。其中一种方法是强化学习中的Q学习算法,它是一种可以与环境交互并从环境中学习并产生相应动作的算法。在本研究中,根据不同的情况,提出了八种不同的在线方法来在线确定Q学习算法中学习参数的值。为了验证这些算法的性能,将这些算法应用于冰冻湖和汽车杆系统,并对结果进行了图形和统计比较。对所得结果进行检验,方法1对离散系统Frozen Lake的效果更好,而方法7对连续系统Cart Pole的效果更好。
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