English

Mix-ME: Quality-Diversity for Multi-Agent Learning

Machine Learning 2023-11-06 v1 Multiagent Systems Neural and Evolutionary Computing

Abstract

In many real-world systems, such as adaptive robotics, achieving a single, optimised solution may be insufficient. Instead, a diverse set of high-performing solutions is often required to adapt to varying contexts and requirements. This is the realm of Quality-Diversity (QD), which aims to discover a collection of high-performing solutions, each with their own unique characteristics. QD methods have recently seen success in many domains, including robotics, where they have been used to discover damage-adaptive locomotion controllers. However, most existing work has focused on single-agent settings, despite many tasks of interest being multi-agent. To this end, we introduce Mix-ME, a novel multi-agent variant of the popular MAP-Elites algorithm that forms new solutions using a crossover-like operator by mixing together agents from different teams. We evaluate the proposed methods on a variety of partially observable continuous control tasks. Our evaluation shows that these multi-agent variants obtained by Mix-ME not only compete with single-agent baselines but also often outperform them in multi-agent settings under partial observability.

Keywords

Cite

@article{arxiv.2311.01829,
  title  = {Mix-ME: Quality-Diversity for Multi-Agent Learning},
  author = {Garðar Ingvarsson and Mikayel Samvelyan and Bryan Lim and Manon Flageat and Antoine Cully and Tim Rocktäschel},
  journal= {arXiv preprint arXiv:2311.01829},
  year   = {2023}
}

Comments

15 pages, 7 figures. Submitted and accepted to the ALOE workshop at NeurIPS 2023

R2 v1 2026-06-28T13:10:32.288Z