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arxiv:2111.08857

SEIHAI: A Sample-efficient Hierarchical AI for the MineRL Competition

Published on Nov 17, 2021
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Abstract

SEIHAI, a sample-efficient hierarchical AI, solves the ObtainDiamond task in MineRL by splitting it into subtasks and using reinforcement and imitation learning with human demonstrations.

AI-generated summary

The MineRL competition is designed for the development of reinforcement learning and imitation learning algorithms that can efficiently leverage human demonstrations to drastically reduce the number of environment interactions needed to solve the complex ObtainDiamond task with sparse rewards. To address the challenge, in this paper, we present SEIHAI, a Sample-efficient Hierarchical AI, that fully takes advantage of the human demonstrations and the task structure. Specifically, we split the task into several sequentially dependent subtasks, and train a suitable agent for each subtask using reinforcement learning and imitation learning. We further design a scheduler to select different agents for different subtasks automatically. SEIHAI takes the first place in the preliminary and final of the NeurIPS-2020 MineRL competition.

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