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Online Transfer Learning in Reinforcement Learning Domains

机译:加固学习领域的在线转移学习

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This paper proposes an online transfer framework to capture the interaction among agents and shows that current transfer learning in reinforcement learning is a special case of online transfer. Furthermore, this paper re-characterizes existing agents-teaching-agents methods as online transfer and analyze one such teaching method in three ways. First, the convergence of Qlearning and Sarsa with tabular representation with a finite budget is proven. Second, the convergence of Qlearning and Sarsa with linear function approximation is established. Third, the we show the asymptotic performance cannot be hurt through teaching. Additionally, all theoretical results are empirically validated.
机译:本文提出了一个在线转移框架,以捕捉代理人之间的互动,并显示加强学习中的当前转移学习是在线转移的特殊情况。此外,本文重新表征了现有的代理 - 教学制剂方法作为在线转移,并以三种方式分析一种这样的教学方法。首先,QLearning和Sarsa的收敛性与具有有限预算的表格表示有表格。其次,建立了QLearning和Sarsa的收敛性,具有线性函数近似。第三,我们展示了渐近性能不能通过教学伤害。此外,所有理论结果都是经验验证的。

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