Challenges of real-world reinforcement learning: definitions, benchmarks and analysis

Reinforcement learning (RL) has proven its worth in a series of artificial domains, and is beginning to show some successes in real-world scenarios. However, much of the research advances in RL are hard to leverage in real-world systems due to a series of assumptions that are rarely satisfied in pra...

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Veröffentlicht in:Machine learning 2021-09, Vol.110 (9), p.2419-2468
Hauptverfasser: Dulac-Arnold, Gabriel, Levine, Nir, Mankowitz, Daniel J., Li, Jerry, Paduraru, Cosmin, Gowal, Sven, Hester, Todd
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Sprache:eng
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Zusammenfassung:Reinforcement learning (RL) has proven its worth in a series of artificial domains, and is beginning to show some successes in real-world scenarios. However, much of the research advances in RL are hard to leverage in real-world systems due to a series of assumptions that are rarely satisfied in practice. In this work, we identify and formalize a series of independent challenges that embody the difficulties that must be addressed for RL to be commonly deployed in real-world systems. For each challenge, we define it formally in the context of a Markov Decision Process, analyze the effects of the challenge on state-of-the-art learning algorithms, and present some existing attempts at tackling it. We believe that an approach that addresses our set of proposed challenges would be readily deployable in a large number of real world problems. Our proposed challenges are implemented in a suite of continuous control environments called realworldrl-suite which we propose an as an open-source benchmark.
ISSN:0885-6125
1573-0565
DOI:10.1007/s10994-021-05961-4