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arxiv: 1803.01118 · v2 · submitted 2018-03-03 · 💻 cs.AI

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Some Considerations on Learning to Explore via Meta-Reinforcement Learning

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classification 💻 cs.AI
keywords learninge-mamlexplorationmetareinforcementtextalgorithmsbetter
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We consider the problem of exploration in meta reinforcement learning. Two new meta reinforcement learning algorithms are suggested: E-MAML and E-$\text{RL}^2$. Results are presented on a novel environment we call `Krazy World' and a set of maze environments. We show E-MAML and E-$\text{RL}^2$ deliver better performance on tasks where exploration is important.

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