论文标题
通过强化学习学习抽象
Towards Learning Abstractions via Reinforcement Learning
论文作者
论文摘要
在本文中,我们采取了第一步,研究了一种通过强化学习培训的多代理系统中有效沟通方案的新方法。我们将符号方法与机器学习相结合,在称为神经符号系统中。这些代理不仅限于使用初始原语:增强学习与新型高级概念扩展了当前语言的步骤,从而可以通过较短的消息进行概括和更有信息的通信。我们证明,这种方法使代理商可以在小型协作施工任务上更快地收敛。
In this paper we take the first steps in studying a new approach to synthesis of efficient communication schemes in multi-agent systems, trained via reinforcement learning. We combine symbolic methods with machine learning, in what is referred to as a neuro-symbolic system. The agents are not restricted to only use initial primitives: reinforcement learning is interleaved with steps to extend the current language with novel higher-level concepts, allowing generalisation and more informative communication via shorter messages. We demonstrate that this approach allow agents to converge more quickly on a small collaborative construction task.