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Meta Reinforcement Learning with Distribution of Exploration Parameters Learned by Evolution Strategies (1812.11314v2)

Published 29 Dec 2018 in cs.LG, cs.AI, and stat.ML

Abstract: In this paper, we propose a novel meta-learning method in a reinforcement learning setting, based on evolution strategies (ES), exploration in parameter space and deterministic policy gradients. ES methods are easy to parallelize, which is desirable for modern training architectures; however, such methods typically require a huge number of samples for effective training. We use deterministic policy gradients during adaptation and other techniques to compensate for the sample-efficiency problem while maintaining the inherent scalability of ES methods. We demonstrate that our method achieves good results compared to gradient-based meta-learning in high-dimensional control tasks in the MuJoCo simulator. In addition, because of gradient-free methods in the meta-training phase, which do not need information about gradients and policies in adaptation training, we predict and confirm our algorithm performs better in tasks that need multi-step adaptation.

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Authors (4)
  1. Yiming Shen (6 papers)
  2. Kehan Yang (2 papers)
  3. Yufeng Yuan (15 papers)
  4. Simon Cheng Liu (1 paper)

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