We propose a lifelong learning system that has the ability to reuse and transfer knowledge from one task to another while efficiently retaining the previously learned knowledge-base. Knowledge is transferred by learning reusable skills to solve tasks in Minecraft, a popular video game which is an unsolved and high-dimensional lifelong learning problem. These reusable skills, which we refer to as Deep Skill Networks, are then incorporated into our novel Hierarchical Deep Reinforcement Learning Network (H-DRLN) architecture using two techniques: (1) a deep skill array and (2) skill distillation, our novel variation of policy distillation (Rusu et. al. 2015) for learning skills. Skill distillation enables the H-DRLN to efficiently retain knowledge and therefore scale in lifelong learning, by accumulating knowledge and encapsulating multiple reusable skills into a single distilled network. The H-DRLN exhibits superior performance and lower learning sample complexity compared to the regular Deep Q Network (Mnih et. al. 2015) in sub-domains of Minecraft.
A Deep Hierarchical Approach to Lifelong Learning in Minecraft
Chen Tessler,Shahar Givony,Tom Zahavy,D. Mankowitz,Shie Mannor
Published 2016 in AAAI Conference on Artificial Intelligence
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- Publication year
2016
- Venue
AAAI Conference on Artificial Intelligence
- Publication date
2016-04-25
- Fields of study
Computer Science
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