Towards Learning Abstractions via Reinforcement Learning
Paper in proceeding, 2022

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.

Reinforcement learning

Multi Agent Systems

Neuro-Symbolic Systems

Emergent Communication

Author

Erik Jergéus

Student at Chalmers

Leo Karlsson Oinonen

Student at Chalmers

Emil Carlsson

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

Moa Johansson

Electric, Computer, IT and Industrial Engineering

CEUR Workshop Proceedings

16130073 (ISSN)

Vol. 3400 120-126

8th International Workshop on Artificial Intelligence and Cognition, AIC 2022
Orebro, Sweden,

Subject Categories

Computer Science

More information

Latest update

6/26/2023