Richelieu: Self-Evolving LLM-Based Agents for AI Diplomacy
NuerIPS 2024 Diplomacy is one of the most sophisticated activities in human society, involving complex interactions among multiple parties that require skills in social reasoning, negotiation, and long-term strategic planning. Previous AI agents have demonstrated their ability to handle multi-step g...
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Zusammenfassung: | NuerIPS 2024 Diplomacy is one of the most sophisticated activities in human society,
involving complex interactions among multiple parties that require skills in
social reasoning, negotiation, and long-term strategic planning. Previous AI
agents have demonstrated their ability to handle multi-step games and large
action spaces in multi-agent tasks. However, diplomacy involves a staggering
magnitude of decision spaces, especially considering the negotiation stage
required. While recent agents based on large language models (LLMs) have shown
potential in various applications, they still struggle with extended planning
periods in complex multi-agent settings. Leveraging recent technologies for
LLM-based agents, we aim to explore AI's potential to create a human-like agent
capable of executing comprehensive multi-agent missions by integrating three
fundamental capabilities: 1) strategic planning with memory and reflection; 2)
goal-oriented negotiation with social reasoning; and 3) augmenting memory
through self-play games for self-evolution without human in the loop. |
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DOI: | 10.48550/arxiv.2407.06813 |