Putting Data at the Centre of Offline Multi-Agent Reinforcement Learning

Claude Formanek, Louise Beyers, Callum Rhys Tilbury, Jonathan P. Shock, Arnu Pretorius
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Abstract

Offline multi-agent reinforcement learning (MARL) is an exciting direction of research that uses static datasets to find optimal control policies for multi-agent systems. Though the field is by definition data-driven, efforts have thus far neglected data in their drive to achieve state-of-the-art results. We first substantiate this claim by surveying the literature, showing how the majority of works generate their own datasets without consistent methodology and provide sparse information about the characteristics of these datasets. We then show why neglecting the nature of the data is problematic, through salient examples of how tightly algorithmic performance is coupled to the dataset used, necessitating a common foundation for experiments in the field. In response, we take a big step towards improving data usage and data awareness in offline MARL, with three key contributions: (1) a clear guideline for generating novel datasets; (2) a standardisation of over 80 existing datasets, hosted in a publicly available repository, using a consistent storage format and easy-to-use API; and (3) a suite of analysis tools that allow us to understand these datasets better, aiding further development.
将数据置于离线多代理强化学习的中心位置
离线多代理强化学习(MARL)是一个令人兴奋的研究方向,它利用静态数据集来寻找多代理系统的最优控制策略。虽然从定义上讲,该领域是数据驱动的,但迄今为止,人们在努力取得最先进结果的过程中忽略了数据。我们首先通过对文献的调查证实了这一说法,并展示了大多数作品是如何在没有一致方法的情况下生成自己的数据集,并提供了有关数据集特征的稀缺信息。然后,我们通过一些突出的例子,说明算法性能与所使用的数据集是如何紧密联系在一起的,这就需要为该领域的实验提供一个共同的基础,从而说明为什么忽视数据的性质是有问题的。作为回应,我们在改进离线 MARL 中的数据使用和数据感知方面迈出了一大步,主要贡献有三:(1)为生成新数据集提供了明确的指导;(2)对现有的 80 多个数据集进行了标准化,这些数据集托管在一个公开可用的存储库中,使用一致的存储格式和易于使用的 API;(3)提供了一套分析工具,使我们能够更好地理解这些数据集,从而有助于进一步的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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