Benevolent Dictators? On LLM Agent Behavior in Dictator Games
Andreas Einwiller, Kanishka Ghosh Dastidar, Artur Romazanov, Annette Hautli-Janisz, Michael Granitzer, Florian Lemmerich

TL;DR
This paper introduces the LLM-ABS framework to study how different system prompts influence Large Language Model agents' behavior in dictator games, revealing prompt sensitivity and fairness preferences.
Contribution
The study presents a new framework for analyzing LLM agent behavior that accounts for prompt sensitivity and linguistic features, improving robustness in behavioral experiments.
Findings
Agents often show a strong preference for fairness.
System prompts significantly influence agent behavior.
Linguistic analysis reveals different response patterns.
Abstract
In behavioral sciences, experiments such as the ultimatum game are conducted to assess preferences for fairness or self-interest of study participants. In the dictator game, a simplified version of the ultimatum game where only one of two players makes a single decision, the dictator unilaterally decides how to split a fixed sum of money between themselves and the other player. Although recent studies have explored behavioral patterns of AI agents based on Large Language Models (LLMs) instructed to adopt different personas, we question the robustness of these results. In particular, many of these studies overlook the role of the system prompt - the underlying instructions that shape the model's behavior - and do not account for how sensitive results can be to slight changes in prompts. However, a robust baseline is essential when studying highly complex behavioral aspects of LLMs. To…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Ethics and Social Impacts of AI · Mobile Crowdsensing and Crowdsourcing
