AI RESEARCH
Framing Effects in Independent-Agent Large Language Models: A Cross-Family Behavioral Analysis
arXiv CS.AI
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ArXi:2603.19282v1 Announce Type: cross In many real-world applications, large language models (LLMs) operate as independent agents without interaction, thereby limiting coordination. In this setting, we examine how prompt framing influences decisions in a threshold voting task involving individual-group interest conflict. Two logically equivalent prompts with different framings were tested across diverse LLM families under isolated trials. Results show that prompt framing significantly influences choice distributions, often shifting preferences toward risk-averse options.