학술논문

Generating and Adapting to Diverse Ad-Hoc Cooperation Agents in Hanabi
Document Type
Working Paper
Source
Subject
Computer Science - Artificial Intelligence
Computer Science - Neural and Evolutionary Computing
Language
Abstract
Hanabi is a cooperative game that brings the problem of modeling other players to the forefront. In this game, coordinated groups of players can leverage pre-established conventions to great effect, but playing in an ad-hoc setting requires agents to adapt to its partner's strategies with no previous coordination. Evaluating an agent in this setting requires a diverse population of potential partners, but so far, the behavioral diversity of agents has not been considered in a systematic way. This paper proposes Quality Diversity algorithms as a promising class of algorithms to generate diverse populations for this purpose, and generates a population of diverse Hanabi agents using MAP-Elites. We also postulate that agents can benefit from a diverse population during training and implement a simple "meta-strategy" for adapting to an agent's perceived behavioral niche. We show this meta-strategy can work better than generalist strategies even outside the population it was trained with if its partner's behavioral niche can be correctly inferred, but in practice a partner's behavior depends and interferes with the meta-agent's own behavior, suggesting an avenue for future research in characterizing another agent's behavior during gameplay.
Comment: arXiv admin note: text overlap with arXiv:1907.03840. In early access at R. Canaan, X. Gao, J. Togelius, A. Nealen and S. Menzel, "Generating and Adapting to Diverse Ad-Hoc Partners in Hanabi," in IEEE Transactions on Games