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Training Example Generation Method for Supervised Learning Agents in Sequential Scenarios

机译:顺序场景中受监督学习代理的训练示例生成方法

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In this paper we propose a method of training example generation from agent's experience, which is suitable for sequential sce- narios. The experience consists of the agent's observations and its action records. Examples generated are used by the agent to learn a classifier, which is used to make decisions about its strategy in the following problem instances. The method is tested in a Sovereign environment, which is an economics simulation created to test agent-based learning. Experimental results show that an agent using the proposed methods is able to learn and achieves better results than random and heuristic agents.
机译:在本文中,我们提出了一种从代理人的经验中训练示例生成的方法,该方法适用于顺序场景。经验包括代理人的观察及其行动记录。代理使用生成的示例来学习分类器,该分类器用于在以下问题实例中对其策略进行决策。该方法在主权环境中进行了测试,这是一种经济模拟,用于测试基于主体的学习。实验结果表明,与随机和启发式代理相比,使用拟议方法的代理能够学习并获得更好的结果。

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