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Introduction of Majority Vote of Neighborhood Conditions for Sneak Form Reinforcement Learning

机译:潜行席位强化学习邻里条件的大多数投票引入

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Chain Form Reinforcement Learning (CFRL) was proposed for a reinforcement learning agent using low memory. In this paper, we introduce Sneak Form Reinforcement Learning (SFRL). SFRL is the method where we improve CFRL in terms of Contextual Learning. If a sequence of state-action pairs has a shortest path, a SFRL agent cuts and saves the path. To improve the performance of SFRL, we introduce Majority Vote of Neighborhood Conditions for SFRL and call this method MVNC. Majority Vote of Neighborhood Conditions is the rule which agent in an unknown state selects an action not at random but with circumjacent information. Our methods were made a comparison to Q-Learning and CFRL in several easy simulations. We examined performance and discussed thebest usage environment.
机译:提出了使用低记忆的加强学习剂提出了链式强化学习(CFRL)。在本文中,我们介绍了潜行形式加固学习(SFRL)。 SFRL是我们在语境学习方面改善CFRL的方法。如果一系列状态 - 动作对具有最短路径,则SFRL代理剪切并节省路径。为了提高SFRL的性能,我们向SFRL介绍了邻域条件的大多数投票,并调用了这种方法MVNC。邻居条件的大多数投票是未知状态的代理的规则选择不随意但具有宽带信息的动作。在几种简单的模拟中,我们的方法与Q-Learning和CFRL进行了比较。我们检查了性能并讨论了最适合的使用环境。

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