2026-04-13
Seeing the reasoning: How LLM rationales influence user trust and decision-making in factual verification tasks
Publication
Publication
Large Language Models (LLMs) increasingly show reasoning rationales alongside their answers, turning "reasoning"’ into a user-interface element. While step-by-step rationales are typically associated with model performance, how they influence users’ trust and decision-making in factual verification tasks remains unclear. We ran an online study (N=68) manipulating three properties of LLM reasoning rationales: presentation format (instant vs. delayed vs. on-demand), correctness (correct vs. incorrect), and certainty framing (none vs. certain vs. uncertain). We found that correct rationales and certainty cues increased trust, decision confidence, and AI advice adoption, whereas uncertainty cues reduced them. Presentation format did not have a significant effect, suggesting users were less sensitive to how reasoning was revealed than to its reliability. Participants indicated they use rationales to primarily audit outputs and calibrate trust, where they expected rationales in stepwise, adaptive forms with certainty indicators. Our work shows that user-facing rationales, if poorly designed, can both support decision-making yet miscalibrate trust.
| Additional Metadata | |
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| , , , | |
| Association for Computing Machinery | |
| doi.org/10.1145/3772363.3798613 | |
| Extended Abstracts of the 2026 CHI Conference on Human Factors in Computing Systems | |
| creativecommons.org/licenses/by-nc-nd/4.0/ | |
| Organisation | Distributed and Interactive Systems |
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Sun, X., Wei, S., Bosch, J., Echizen, I., Sugawara, S.& El Ali, A. (2026). Seeing the reasoning: How LLM rationales influence user trust and decision-making in factual verification tasks. CHI EA: Extended Abstracts of the CHI Conference on Human Factors in Computing Systems, 585:1–585:7.https://doi.org/10.1145/3772363.3798613 |
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