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Learning to Plan in High Dimensions via Neural Exploration-Exploitation Trees

2019-02-28ICLR 2020Code Available0· sign in to hype

Binghong Chen, Bo Dai, Qinjie Lin, Guo Ye, Han Liu, Le Song

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Abstract

We propose a meta path planning algorithm named Neural Exploration-Exploitation Trees~(NEXT) for learning from prior experience for solving new path planning problems in high dimensional continuous state and action spaces. Compared to more classical sampling-based methods like RRT, our approach achieves much better sample efficiency in high-dimensions and can benefit from prior experience of planning in similar environments. More specifically, NEXT exploits a novel neural architecture which can learn promising search directions from problem structures. The learned prior is then integrated into a UCB-type algorithm to achieve an online balance between exploration and exploitation when solving a new problem. We conduct thorough experiments to show that NEXT accomplishes new planning problems with more compact search trees and significantly outperforms state-of-the-art methods on several benchmarks.

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