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Emphatic Algorithms for Deep Reinforcement Learning

Machine Learning 2021-06-23 v1 Machine Learning

Abstract

Off-policy learning allows us to learn about possible policies of behavior from experience generated by a different behavior policy. Temporal difference (TD) learning algorithms can become unstable when combined with function approximation and off-policy sampling - this is known as the ''deadly triad''. Emphatic temporal difference (ETD(λ\lambda)) algorithm ensures convergence in the linear case by appropriately weighting the TD(λ\lambda) updates. In this paper, we extend the use of emphatic methods to deep reinforcement learning agents. We show that naively adapting ETD(λ\lambda) to popular deep reinforcement learning algorithms, which use forward view multi-step returns, results in poor performance. We then derive new emphatic algorithms for use in the context of such algorithms, and we demonstrate that they provide noticeable benefits in small problems designed to highlight the instability of TD methods. Finally, we observed improved performance when applying these algorithms at scale on classic Atari games from the Arcade Learning Environment.

Keywords

Cite

@article{arxiv.2106.11779,
  title  = {Emphatic Algorithms for Deep Reinforcement Learning},
  author = {Ray Jiang and Tom Zahavy and Zhongwen Xu and Adam White and Matteo Hessel and Charles Blundell and Hado van Hasselt},
  journal= {arXiv preprint arXiv:2106.11779},
  year   = {2021}
}
R2 v1 2026-06-24T03:28:09.192Z