2000 character limit reached
Low-Bandwidth Communication Emerges Naturally in Multi-Agent Learning Systems (2011.14890v2)
Published 30 Nov 2020 in cs.MA, cs.AI, and cs.LG
Abstract: In this work, we study emergent communication through the lens of cooperative multi-agent behavior in nature. Using insights from animal communication, we propose a spectrum from low-bandwidth (e.g. pheromone trails) to high-bandwidth (e.g. compositional language) communication that is based on the cognitive, perceptual, and behavioral capabilities of social agents. Through a series of experiments with pursuit-evasion games, we identify multi-agent reinforcement learning algorithms as a computational model for the low-bandwidth end of the communication spectrum.
- Niko A. Grupen (6 papers)
- Daniel D. Lee (44 papers)
- Bart Selman (33 papers)