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Main Authors: Yan, Ming, Li, Ruihao, Zhang, Hao, Wang, Hao, Yang, Zhilan, Yan, Ji
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2312.17653
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author Yan, Ming
Li, Ruihao
Zhang, Hao
Wang, Hao
Yang, Zhilan
Yan, Ji
author_facet Yan, Ming
Li, Ruihao
Zhang, Hao
Wang, Hao
Yang, Zhilan
Yan, Ji
contents Language agents have shown impressive problem-solving skills within defined settings and brief timelines. Yet, with the ever-evolving complexities of open-world simulations, there's a pressing need for agents that can flexibly adapt to complex environments and consistently maintain a long-term memory to ensure coherent actions. To bridge the gap between language agents and open-world games, we introduce Language Agent for Role-Playing (LARP), which includes a cognitive architecture that encompasses memory processing and a decision-making assistant, an environment interaction module with a feedback-driven learnable action space, and a postprocessing method that promotes the alignment of various personalities. The LARP framework refines interactions between users and agents, predefined with unique backgrounds and personalities, ultimately enhancing the gaming experience in open-world contexts. Furthermore, it highlights the diverse uses of language models in a range of areas such as entertainment, education, and various simulation scenarios. The project page is released at https://miao-ai-lab.github.io/LARP/.
format Preprint
id arxiv_https___arxiv_org_abs_2312_17653
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle LARP: Language-Agent Role Play for Open-World Games
Yan, Ming
Li, Ruihao
Zhang, Hao
Wang, Hao
Yang, Zhilan
Yan, Ji
Artificial Intelligence
Language agents have shown impressive problem-solving skills within defined settings and brief timelines. Yet, with the ever-evolving complexities of open-world simulations, there's a pressing need for agents that can flexibly adapt to complex environments and consistently maintain a long-term memory to ensure coherent actions. To bridge the gap between language agents and open-world games, we introduce Language Agent for Role-Playing (LARP), which includes a cognitive architecture that encompasses memory processing and a decision-making assistant, an environment interaction module with a feedback-driven learnable action space, and a postprocessing method that promotes the alignment of various personalities. The LARP framework refines interactions between users and agents, predefined with unique backgrounds and personalities, ultimately enhancing the gaming experience in open-world contexts. Furthermore, it highlights the diverse uses of language models in a range of areas such as entertainment, education, and various simulation scenarios. The project page is released at https://miao-ai-lab.github.io/LARP/.
title LARP: Language-Agent Role Play for Open-World Games
topic Artificial Intelligence
url https://arxiv.org/abs/2312.17653