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Combining Rule Induction and Reinforcement Learning: An Agent-based Vehicle Routing

机译:结合规则归纳和强化学习:基于代理的车辆路线

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Reinforcement learning suffers from inefficiency when the number of potential solutions to be searched is large. This paper describes a method of improving reinforcement learning by applying rule induction in multi-agent systems. Knowledge captured by learned rules is used to reduce search space in reinforcement learning, allowing it to shorten learning time. The method is particularly suitable for agents operating in dynamically changing environments, in which fast response to changes is required. The method has been tested in transportation logistics domain in which agents represent vehicles being routed in a simple road network. Experimental results indicate that in this domain the method performs better than traditional Q-learning, as indicated by statistical comparison.
机译:当要搜索的潜在解决方案数量很大时,强化学习会效率低下。本文介绍了一种通过在多主体系统中应用规则归纳来改善强化学习的方法。通过学习到的规则捕获的知识可用于减少强化学习中的搜索空间,从而缩短学习时间。该方法特别适用于在动态变化的环境中运行的代理,在该环境中需要快速响应变化。该方法已在运输物流领域进行了测试,在该领域中,代理代表在简单道路网络中行驶的车辆。实验结果表明,如统计比较所示,该方法在此领域的性能优于传统的Q学习。

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