论文标题

关于竞争性多代理团队的紧急沟通

On Emergent Communication in Competitive Multi-Agent Teams

论文作者

Liang, Paul Pu, Chen, Jeffrey, Salakhutdinov, Ruslan, Morency, Louis-Philippe, Kottur, Satwik

论文摘要

最近的一些作品发现,当端到端学习时,大多数合作的多代理系统开发的扎实构图语言的出现以最大程度地提高下游任务的性能。但是,人群学会了解决涉及交流行为的复杂任务,不仅在完全合作的环境中,而且在竞争是进一步改善的额外外部压力的情况下。在这项工作中,我们调查了来自外部,类似代理团队的绩效竞争是否可以充当社会影响力,以鼓励多机构人口开发更好的沟通协议,以提高性能,组成性和融合速度。我们从Task&Talk开始,这是一个先前提议的参考游戏,当时我们的测试床并将其扩展到任务,Talk&Compete,这是一款涉及两个竞争团队的游戏,每个团队每个由两个上述合作社组成。使用这种新环境,我们提供了一项实证研究,证明了竞争影响对多代理团队的影响。我们的结果表明,外部竞争的影响会提高准确性和泛化,并更快地出现沟通语言,这些沟通语言更具信息性和作品。

Several recent works have found the emergence of grounded compositional language in the communication protocols developed by mostly cooperative multi-agent systems when learned end-to-end to maximize performance on a downstream task. However, human populations learn to solve complex tasks involving communicative behaviors not only in fully cooperative settings but also in scenarios where competition acts as an additional external pressure for improvement. In this work, we investigate whether competition for performance from an external, similar agent team could act as a social influence that encourages multi-agent populations to develop better communication protocols for improved performance, compositionality, and convergence speed. We start from Task & Talk, a previously proposed referential game between two cooperative agents as our testbed and extend it into Task, Talk & Compete, a game involving two competitive teams each consisting of two aforementioned cooperative agents. Using this new setting, we provide an empirical study demonstrating the impact of competitive influence on multi-agent teams. Our results show that an external competitive influence leads to improved accuracy and generalization, as well as faster emergence of communicative languages that are more informative and compositional.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源