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A Model of Multi-turn Human Persuadability Using Probabilistic Belief Tracing

Researchers have developed PERSUASIONTRACE, a framework that tracks human belief changes across multiple turns in conversations with large language models, revealing that people cluster into two distinct groups of belief updates and respond differently to rhetorical strategies. The study introduces a Bayesian-network simulated target that achieves near-human fidelity in replicating belief dynamics, scoring 81 compared to a human reference of 80, while standard LLM simulators scored only 64. This process-level evaluation protocol reframes persuasion research from measuring only pre/post belief change to analyzing the full trajectory of belief movement, offering a stronger foundation for scientific analysis and safer optimization of persuasive AI systems.

read1 min publishedJun 5, 2026

arXiv:2606.05330v1 Announce Type: new Abstract: Large language models can shift human beliefs across high-stakes domains, but most persuasion studies rely on pre/post belief change. These endpoint measures identify whether persuasion occurred, yet miss where and how beliefs moved within a dialogue. We present PERSUASIONTRACE, a framework for studying persuasion in human-LLM interaction. Built on a web-based experimental platform, PERSUASIONTRACE contributes a tool for multi-turn persuasion studies and a process-level evaluation protocol: it records multi-turn belief reports from human or simulated targets of persuasion, annotates persuader turns with rhetorical dimensions (logos/pathos/ethos), and evaluates simulators by fidelity to real human belief dynamics. Using this framework, we find that human targets group into two clusters of multi-turn belief updates and exhibit susceptibility to rhetorical strategies, and that LLMs are persuasive across generic and personalized topics, text and audio modalities, and multi-turn interactions. Prior work has chiefly used vanilla-prompted LLMs to simulate human targets, but we show that these simulators fail to replicate human belief dynamics. We introduce a Bayesian-network simulated target that maintains an explicit latent belief state over time so each persuader message yields cognitively realistic belief updates. In human-likeness evaluation, our Bayesian target scores near a human reference (81 vs 80), while baseline LLM targets score substantially lower (64). PERSUASIONTRACE reframes persuasion evaluation from endpoint movement alone to process fidelity, providing a stronger basis for scientific analysis and safer optimization of persuasive systems.

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