AI RESEARCH

Disentangling Interaction and Bias Effects in Opinion Dynamics of Large Language Models

arXiv CS.AI

ArXi:2509.06858v2 Announce Type: replace-cross Large Language Models are increasingly used to simulate human opinion dynamics, yet the effect of genuine interaction is often obscured by systematic biases. We develop a Bayesian framework to disentangle and quantify three such biases: (i) A topic bias toward the LLM's default stance; (ii) an agreement bias favoring agreement to the prompted statement irrespective of the question; and (iii) an anchoring bias toward the initiating agent's stance.