MLLGAug 9, 2016

On Lower Bounds for Regret in Reinforcement Learning

arXiv:1608.02732v1108 citations
Originality Synthesis-oriented
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It addresses foundational issues in reinforcement learning theory, but is incremental as it primarily critiques and refines existing results.

This paper clarifies lower bounds on regret in reinforcement learning by reproducing a known lower bound, questioning a proof in prior work as a conjecture, and suggesting that upper bounds can be improved to match weaker lower bounds.

This is a brief technical note to clarify the state of lower bounds on regret for reinforcement learning. In particular, this paper: - Reproduces a lower bound on regret for reinforcement learning, similar to the result of Theorem 5 in the journal UCRL2 paper (Jaksch et al 2010). - Clarifies that the proposed proof of Theorem 6 in the REGAL paper (Bartlett and Tewari 2009) does not hold using the standard techniques without further work. We suggest that this result should instead be considered a conjecture as it has no rigorous proof. - Suggests that the conjectured lower bound given by (Bartlett and Tewari 2009) is incorrect and, in fact, it is possible to improve the scaling of the upper bound to match the weaker lower bounds presented in this paper. We hope that this note serves to clarify existing results in the field of reinforcement learning and provides interesting motivation for future work.

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