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A Study of Qualitative Knowledge-Based Exploration for Continuous Deep Reinforcement Learning

机译:基于定性知识的持续深层强化学习探索研究

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As an important method to solve sequential decision-making problems, reinforcement learning learns the policy of tasks through the interaction with environment. But it has difficulties scaling to large-scale problems. One of the reasons is the exploration and exploitation dilemma which may lead to inefficient learning. We present an approach that addresses this shortcoming by introducing qualitative knowledge into reinforcement learning using cloud control systems to represent ‘if-then’ rules. We use it as the heuristics exploration strategy to guide the action selection in deep reinforcement learning. Empirical evaluation results show that our approach can make significant improvement in the learning process.
机译:作为解决顺序决策问题的重要方法,强化学习通过与环境的互动来学习任务策略。但是它很难扩展到大范围的问题。原因之一是探索和开发的困境,这可能导致学习效率低下。我们提出了一种方法来解决此缺点,方法是使用云控制系统将“定性”规则引入定性知识到强化学习中。我们将其用作启发式探索策略,以指导深度强化学习中的动作选择。实证评估结果表明,我们的方法可以极大地改善学习过程。

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