Learning Curriculum Policies for Reinforcement Learning

December 01, 2018 ยท Declared Dead ยท ๐Ÿ› Adaptive Agents and Multi-Agent Systems

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Authors Sanmit Narvekar, Peter Stone arXiv ID 1812.00285 Category cs.LG: Machine Learning Cross-listed cs.AI, stat.ML Citations 95 Venue Adaptive Agents and Multi-Agent Systems Last Checked 4 months ago
Abstract
Curriculum learning in reinforcement learning is a training methodology that seeks to speed up learning of a difficult target task, by first training on a series of simpler tasks and transferring the knowledge acquired to the target task. Automatically choosing a sequence of such tasks (i.e. a curriculum) is an open problem that has been the subject of much recent work in this area. In this paper, we build upon a recent method for curriculum design, which formulates the curriculum sequencing problem as a Markov Decision Process. We extend this model to handle multiple transfer learning algorithms, and show for the first time that a curriculum policy over this MDP can be learned from experience. We explore various representations that make this possible, and evaluate our approach by learning curriculum policies for multiple agents in two different domains. The results show that our method produces curricula that can train agents to perform on a target task as fast or faster than existing methods.
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