Autonomous shaping: knowledge transfer in reinforcement learning

G. Konidaris, A. Barto
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引用次数: 225

Abstract

We introduce the use of learned shaping rewards in reinforcement learning tasks, where an agent uses prior experience on a sequence of tasks to learn a portable predictor that estimates intermediate rewards, resulting in accelerated learning in later tasks that are related but distinct. Such agents can be trained on a sequence of relatively easy tasks in order to develop a more informative measure of reward that can be transferred to improve performance on more difficult tasks without requiring a hand coded shaping function. We use a rod positioning task to show that this significantly improves performance even after a very brief training period.
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自主塑造:强化学习中的知识转移
我们在强化学习任务中引入了学习成型奖励的使用,其中智能体使用一系列任务的先验经验来学习估计中间奖励的便携式预测器,从而加速了后期相关但不同的任务的学习。这样的智能体可以在一系列相对简单的任务上进行训练,以便开发一种更有信息的奖励措施,这种奖励措施可以转移到更困难的任务上,而不需要手工编码的塑造函数。我们使用一个杆定位任务来证明,即使在很短的训练时间后,这也能显著提高表现。
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