Learning to Cooperate with Completely Unknown Teammates

Alexandre Neves, Alberto Sardinha
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Abstract

. A key goal of ad hoc teamwork is to develop a learning agent that cooperates with unknown teams, without resorting to any pre-coordination protocol. Despite a vast number of ad hoc teamwork algorithms in the literature, most of them cannot address the problem of learning to cooperate with a completely unknown team, unless it learns from scratch. This article presents a novel approach that uses transfer learning alongside the state-of-the-art PLASTIC-Policy to adapt to completely unknown teammates quickly. We test our solution within the Half Field Offense simulator with five different teammates. The teammates were designed independently by developers from different countries and at different times. Our empirical evaluation shows that it is advantageous for an ad hoc agent to leverage its past knowledge when adapting to a new team instead of learning how to cooperate with it from scratch.
学会与完全不认识的队友合作
. 特别团队合作的一个关键目标是开发一个学习代理,该代理可以与未知团队合作,而无需诉诸任何预先协调协议。尽管文献中有大量的特别团队合作算法,但它们中的大多数都不能解决学习与一个完全未知的团队合作的问题,除非它从头开始学习。本文提出了一种新颖的方法,该方法使用迁移学习和最先进的PLASTIC-Policy来快速适应完全未知的队友。我们在半场进攻模拟器中测试了我们的解决方案,有五个不同的队友。团队成员是由来自不同国家和不同时期的开发者独立设计的。我们的实证评估表明,在适应新团队时,利用其过去的知识比从头开始学习如何与新团队合作更有利。
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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