cs.AI updates on arXiv.org 07月02日 12:03
Gym4ReaL: A Suite for Benchmarking Real-World Reinforcement Learning
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本文介绍了Gym4ReaL,一套旨在支持真实场景下强化学习算法开发与评估的现实环境集合。通过实验证明,在真实环境中,标准强化学习算法表现出与规则基准的竞争力,推动了新方法的研究以充分利用强化学习解决真实任务复杂性的潜力。

arXiv:2507.00257v1 Announce Type: cross Abstract: In recent years, \emph{Reinforcement Learning} (RL) has made remarkable progress, achieving superhuman performance in a wide range of simulated environments. As research moves toward deploying RL in real-world applications, the field faces a new set of challenges inherent to real-world settings, such as large state-action spaces, non-stationarity, and partial observability. Despite their importance, these challenges are often underexplored in current benchmarks, which tend to focus on idealized, fully observable, and stationary environments, often neglecting to incorporate real-world complexities explicitly. In this paper, we introduce \texttt{Gym4ReaL}, a comprehensive suite of realistic environments designed to support the development and evaluation of RL algorithms that can operate in real-world scenarios. The suite includes a diverse set of tasks that expose algorithms to a variety of practical challenges. Our experimental results show that, in these settings, standard RL algorithms confirm their competitiveness against rule-based benchmarks, motivating the development of new methods to fully exploit the potential of RL to tackle the complexities of real-world tasks.

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强化学习 真实环境 Gym4ReaL 算法评估 真实任务
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