LLM Rationalis? Measuring Bargaining Capabilities of AI Negotiators
By: Cheril Shah , Akshit Agarwal , Kanak Garg and more
Potential Business Impact:
Computers struggle to negotiate like people.
Bilateral negotiation is a complex, context-sensitive task in which human negotiators dynamically adjust anchors, pacing, and flexibility to exploit power asymmetries and informal cues. We introduce a unified mathematical framework for modeling concession dynamics based on a hyperbolic tangent curve, and propose two metrics burstiness tau and the Concession-Rigidity Index (CRI) to quantify the timing and rigidity of offer trajectories. We conduct a large-scale empirical comparison between human negotiators and four state-of-the-art large language models (LLMs) across natural-language and numeric-offers settings, with and without rich market context, as well as six controlled power-asymmetry scenarios. Our results reveal that, unlike humans who smoothly adapt to situations and infer the opponents position and strategies, LLMs systematically anchor at extremes of the possible agreement zone for negotiations and optimize for fixed points irrespective of leverage or context. Qualitative analysis further shows limited strategy diversity and occasional deceptive tactics used by LLMs. Moreover the ability of LLMs to negotiate does not improve with better models. These findings highlight fundamental limitations in current LLM negotiation capabilities and point to the need for models that better internalize opponent reasoning and context-dependent strategy.
Similar Papers
The Illusion of Rationality: Tacit Bias and Strategic Dominance in Frontier LLM Negotiation Games
CS and Game Theory
AI negotiators don't play fair.
Strategic Tradeoffs Between Humans and AI in Multi-Agent Bargaining
Artificial Intelligence
Computers and people negotiate deals differently.
Understanding Economic Tradeoffs Between Human and AI Agents in Bargaining Games
Artificial Intelligence
Computers learn to negotiate like people.