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Advice Taking and Transfer Learning: Naturally Inspired Extensions to Reinforcement Learning

机译:建议和转移学习:自然启发延伸到加固学习

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Reinforcement learning (RL) is a machine learning technique with strong links to natural learning. However, it shares several "unnatural" limitations with many other successful machine learning algorithms. RL agents are not typically able to take advice or to adjust to new situations beyond the specific problem they are asked to learn. Due to limitations like these, RL remains slower and less adaptable than natural learning. Our recent work focuses on extending RL to include the naturally inspired abilities of advice taking and transfer learning. Through experiments in the RoboCup domain, we show that doing so can make RL faster and more adaptable.
机译:加固学习(RL)是一种机器学习技术,具有与自然学习的强烈联系。但是,它与许多其他成功的机器学习算法分享了几个“不自然”的限制。 RL代理商通常不能接受建议或根据要求学习的具体问题的新情况进行调整。由于这些限制如此,RL仍然比自然学习更慢,适应不那么适应。我们最近的工作侧重于扩大RL,包括咨询咨询和转移学习的自然启发能力。通过Robocup域的实验,我们表明这样做可以使RL更快,更适应。

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