Cooperation, Competition, and Maliciousness: LLM-Stakeholders Interactive Negotiation
There is an growing interest in using Large Language Models (LLMs) in multi-agent systems to tackle interactive real-world tasks that require effective collaboration and assessing complex situations. Yet, we still have a limited understanding of LLMs' communication and decision-making abilities...
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Zusammenfassung: | There is an growing interest in using Large Language Models (LLMs) in
multi-agent systems to tackle interactive real-world tasks that require
effective collaboration and assessing complex situations. Yet, we still have a
limited understanding of LLMs' communication and decision-making abilities in
multi-agent setups. The fundamental task of negotiation spans many key features
of communication, such as cooperation, competition, and manipulation
potentials. Thus, we propose using scorable negotiation to evaluate LLMs. We
create a testbed of complex multi-agent, multi-issue, and semantically rich
negotiation games. To reach an agreement, agents must have strong arithmetic,
inference, exploration, and planning capabilities while integrating them in a
dynamic and multi-turn setup. We propose multiple metrics to rigorously
quantify agents' performance and alignment with the assigned role. We provide
procedures to create new games and increase games' difficulty to have an
evolving benchmark. Importantly, we evaluate critical safety aspects such as
the interaction dynamics between agents influenced by greedy and adversarial
players. Our benchmark is highly challenging; GPT-3.5 and small models mostly
fail, and GPT-4 and SoTA large models (e.g., Llama-3 70b) still underperform. |
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DOI: | 10.48550/arxiv.2309.17234 |