基于DE的q -学习算法在大搜索空间应用中提高收敛速度

Z. Rahaman, J. Sil
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引用次数: 1

摘要

强化学习的主要缺点是,在事件结束之前,它什么也学不到。因此,在大空间应用中,学习过程非常缓慢。差分进化算法是一种基于种群的进化优化算法,能够以迭代的方式学习搜索空间。本文采用DE算法对Q-learning方法进行改进,在搜索空间中引入了引导随机性,收敛速度快。为了有效地学习大搜索空间,采用马尔可夫决策过程(MDP)数学框架对该问题进行建模。与基本的Q-learning算法相比,该算法在速度和性能上都取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DE Based Q-Learning Algorithm to Improve Speed of Convergence in Large Search Space Applications
The main drawback of reinforcement learning is that it learns nothing from an episode until it is over. So the learning procedure is very slow in case of large space applications. Differential Evolution (DE) algorithm is a population-based evolutionary optimization algorithm able to learn the search space in iterative way. In the paper, improvement of Q-learning method has been proposed using DE algorithm where guided randomness has been incorporated in the search space resulting fast convergence. Markov Decision Process (MDP), a mathematical framework has been used to model the problem in order to learn the large search space efficiently. The proposed algorithm exhibits better result in terms of speed and performance compare to basic Q-learning algorithm.
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