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M., Jayakumar, S

3 Pith papers cite this work. Polarity classification is still indexing.

3 Pith papers citing it
abstract

We introduce Mix&Match (M&M) - a training framework designed to facilitate rapid and effective learning in RL agents, especially those that would be too slow or too challenging to train otherwise. The key innovation is a procedure that allows us to automatically form a curriculum over agents. Through such a curriculum we can progressively train more complex agents by, effectively, bootstrapping from solutions found by simpler agents. In contradistinction to typical curriculum learning approaches, we do not gradually modify the tasks or environments presented, but instead use a process to gradually alter how the policy is represented internally. We show the broad applicability of our method by demonstrating significant performance gains in three different experimental setups: (1) We train an agent able to control more than 700 actions in a challenging 3D first-person task; using our method to progress through an action-space curriculum we achieve both faster training and better final performance than one obtains using traditional methods. (2) We further show that M&M can be used successfully to progress through a curriculum of architectural variants defining an agents internal state. (3) Finally, we illustrate how a variant of our method can be used to improve agent performance in a multitask setting.

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cs.LG 3

years

2019 3

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representative citing papers

Attentive Multi-Task Deep Reinforcement Learning

cs.LG · 2019-07-05 · unverdicted · novelty 6.0

Attention mechanism dynamically groups task knowledge at state granularity in multi-task DRL to enable positive transfer and avoid negative transfer, matching or exceeding prior methods with fewer parameters.

Growing Action Spaces

cs.LG · 2019-06-28 · unverdicted · novelty 5.0

A curriculum of growing action spaces combined with simultaneous off-policy value estimation accelerates learning in large multi-agent action spaces.

citing papers explorer

Showing 3 of 3 citing papers.

  • Dota 2 with Large Scale Deep Reinforcement Learning cs.LG · 2019-12-13 · accept · none · ref 53

    OpenAI Five achieved superhuman performance in Dota 2 by defeating the world champions using scaled self-play reinforcement learning.

  • Attentive Multi-Task Deep Reinforcement Learning cs.LG · 2019-07-05 · unverdicted · none · ref 5 · internal anchor

    Attention mechanism dynamically groups task knowledge at state granularity in multi-task DRL to enable positive transfer and avoid negative transfer, matching or exceeding prior methods with fewer parameters.

  • Growing Action Spaces cs.LG · 2019-06-28 · unverdicted · none · ref 1 · internal anchor

    A curriculum of growing action spaces combined with simultaneous off-policy value estimation accelerates learning in large multi-agent action spaces.