Reinforcement learning has recently experienced increased prominence in the machine learning community. There are many approaches to solving reinforcement learning problems with new techniques developed constantly. When solving problems using reinforcement learning, there are various difficult challenges to overcome. To ensure progress in the field, benchmarks are important for testing new algorithms and comparing with other approaches. The reproducibility of results for fair comparison is therefore vital in ensuring that improvements are accurately judged. This paper provides an overview of different contributions to reinforcement learning benchmarking and discusses how they can assist researchers to address the challenges facing reinforcement learning. The contributions discussed are the most used and recent in the literature. The paper discusses the contributions in terms of implementation, tasks and provided algorithm implementations with benchmarks. The survey aims to bring attention to the wide range of reinforcement learning benchmarking tasks available and to encourage research to take place in a standardised manner. Additionally, this survey acts as an overview for researchers not familiar with the different tasks that can be used to develop and test new reinforcement learning algorithms.
翻译:通过不断开发的新技术解决强化学习问题的方法很多。在用强化学习解决问题时,需要克服各种困难。为确保在实地取得进展,基准对于测试新的算法和与其他方法进行比较非常重要。因此,为进行公平比较而复制结果对于确保准确判断改进情况至关重要。本文件概述了对加强学习基准的不同贡献,并讨论了他们如何帮助研究人员应对强化学习学习面临的挑战。所讨论的贡献是文献中最常用和最新的。本文件讨论了执行、任务和提供算法执行方面的贡献。调查的目的是提请注意现有的范围广泛的强化学习基准任务,并鼓励以标准化的方式开展研究。此外,本调查还概述了不熟悉可用于开发和测试新的强化学习算法的不同任务的研究人员。