Document Type
Discussion Paper
Publication Date
5-28-2024
CFDP Number
2393
CFDP Pages
39
Abstract
Large Language Models (LLMs) like GPT-4 have revolutionized natural language processing, showing remarkable linguistic proficiency and reasoning capabilities. However, their application in strategic multi-agent decision-making environments is hampered by significant limitations including poor mathematical reasoning, difficulty in following instructions, and a tendency to generate incorrect information. These deficiencies hinder their performance in strategic and interactive tasks that demand adherence to nuanced game rules, long-term planning, exploration in unknown environments, and anticipation of opponents’ moves. To overcome these obstacles, this paper presents a novel LLM agent framework equipped with memory and specialized tools to enhance their strategic decision-making capabilities. We deploy the tools in a number of economically important environments, in particular bilateral bargaining and multi-agent and dynamic mechanism design. We employ quantitative metrics to assess the framework’s performance in various strategic decision-making problems. Our findings establish that our enhanced framework significantly improves the strategic decision-making capability of LLMs. While we highlight the inherent limitations of current LLM models, we demonstrate the improvements through targeted enhancements, suggesting a promising direction for future developments in LLM applications for interactive environments.
Recommended Citation
Li, Chuanhao; Yang, Runhan; Li, Tiankai; Bafarassat, Milad; Sharifi, Kourosh; Bergemann, Dirk; and Yang, Zhuoran, "STRIDE: A Tool-Assisted LLM Agent Framework for Strategic and Interactive Decision-Making" (2024). Cowles Foundation Discussion Papers. 2793.
https://elischolar.library.yale.edu/cowles-discussion-paper-series/2793