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A Survey on Game Playing Agents and Large Models: Methods, Applications, and Challenges

Authors :
Xu, Xinrun
Wang, Yuxin
Xu, Chaoyi
Ding, Ziluo
Jiang, Jiechuan
Ding, Zhiming
Karlsson, Börje F.
Publication Year :
2024

Abstract

The swift evolution of Large-scale Models (LMs), either language-focused or multi-modal, has garnered extensive attention in both academy and industry. But despite the surge in interest in this rapidly evolving area, there are scarce systematic reviews on their capabilities and potential in distinct impactful scenarios. This paper endeavours to help bridge this gap, offering a thorough examination of the current landscape of LM usage in regards to complex game playing scenarios and the challenges still open. Here, we seek to systematically review the existing architectures of LM-based Agents (LMAs) for games and summarize their commonalities, challenges, and any other insights. Furthermore, we present our perspective on promising future research avenues for the advancement of LMs in games. We hope to assist researchers in gaining a clear understanding of the field and to generate more interest in this highly impactful research direction. A corresponding resource, continuously updated, can be found in our GitHub repository.<br />Comment: 13 pages, 3 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.10249
Document Type :
Working Paper