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Human-Agent Cooperation in Games under Incomplete Information through Natural Language Communication

Authors :
Chen, Shenghui
Fried, Daniel
Topcu, Ufuk
Publication Year :
2024

Abstract

Developing autonomous agents that can strategize and cooperate with humans under information asymmetry is challenging without effective communication in natural language. We introduce a shared-control game, where two players collectively control a token in alternating turns to achieve a common objective under incomplete information. We formulate a policy synthesis problem for an autonomous agent in this game with a human as the other player. To solve this problem, we propose a communication-based approach comprising a language module and a planning module. The language module translates natural language messages into and from a finite set of flags, a compact representation defined to capture player intents. The planning module leverages these flags to compute a policy using an asymmetric information-set Monte Carlo tree search with flag exchange algorithm we present. We evaluate the effectiveness of this approach in a testbed based on Gnomes at Night, a search-and-find maze board game. Results of human subject experiments show that communication narrows the information gap between players and enhances human-agent cooperation efficiency with fewer turns.<br />Comment: with appendix

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.14173
Document Type :
Working Paper