论文标题
用于多代理协作的展开的图形学习
Unrolled Graph Learning for Multi-Agent Collaboration
论文作者
论文摘要
在数据交换的收缩下,多学院学习已越来越关注分布式机器学习方案。但是,现有的多项式学习模型通常考虑在固定和强制性协作关系下的数据融合,这不像人类的协作那样灵活和自主。为了填补这一差距,我们提出了一个受人类协作启发的分布式多项式学习模型,在该模型中,代理可以自主检测合适的合作者,并参考合作者的模型以提高绩效。为了实现这种适应性协作,我们使用协作图来指示成对的协作关系。协作图可以通过基于不同代理之间模型相似性的图形学习技术获得。由于模型相似性无法通过固定的图形优化来提出,因此我们通过展开设计图形学习网络,该网络可以学习潜在协作者之间的基本功能。通过对回归和分类任务进行测试,我们验证了我们提出的协作模型可以找出准确的协作关系,并大大提高代理人的学习绩效。
Multi-agent learning has gained increasing attention to tackle distributed machine learning scenarios under constrictions of data exchanging. However, existing multi-agent learning models usually consider data fusion under fixed and compulsory collaborative relations among agents, which is not as flexible and autonomous as human collaboration. To fill this gap, we propose a distributed multi-agent learning model inspired by human collaboration, in which the agents can autonomously detect suitable collaborators and refer to collaborators' model for better performance. To implement such adaptive collaboration, we use a collaboration graph to indicate the pairwise collaborative relation. The collaboration graph can be obtained by graph learning techniques based on model similarity between different agents. Since model similarity can not be formulated by a fixed graphical optimization, we design a graph learning network by unrolling, which can learn underlying similar features among potential collaborators. By testing on both regression and classification tasks, we validate that our proposed collaboration model can figure out accurate collaborative relationship and greatly improve agents' learning performance.