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Guiding a relational learning agent with a learning classifier system

机译:用学习分类器系统指导关系学习代理

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This paper researches a collaborative strategy between an XCS learning classifier system (LCS) and a relational learning (RL) agent. The problem here is to learn a relational policy for a stochastic markovian decision process. In the proposed method the XCS agent is used to improve the performance of the RL agent by filtering the samples used at the induction step. This research shows that in these conditions, one of the main benefits of using the XCS algorithm comes from selecting the examples for relational learning using an estimation for the accuracy of the predicted value at each state-action pair. This kind of transfer learning is important because the characteristics of both agents are complementary: the RL agent incrementally induces a high level description of a policy, while the LCS agent offers adaptation to changes in the environment.
机译:本文研究了XCS学习分类器系统(LCS)和关系学习(RL)代理之间的协作策略。这里的问题是要学习随机马尔可夫决策过程的关系策略。在提出的方法中,XCS试剂用于通过过滤诱导步骤中使用的样品来改善RL试剂的性能。这项研究表明,在这些条件下,使用XCS算法的主要好处之一是通过选择估计每个状态动作对的预测值的准确性来进行关系学习的示例。这种转移学习非常重要,因为两种代理的特性是互补的:RL代理逐渐引起对策略的高级描述,而LCS代理则提供对环境变化的适应性。

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