Saved in:
Bibliographic Details
Main Authors: Yan, Siyu, Zhu, Lusha, Zhu, Jian-Qiao
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.00769
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918317559644160
author Yan, Siyu
Zhu, Lusha
Zhu, Jian-Qiao
author_facet Yan, Siyu
Zhu, Lusha
Zhu, Jian-Qiao
contents One critical aspect of building human-centered, trustworthy artificial intelligence (AI) systems is maintaining calibrated trust: appropriate reliance on AI systems outperforms both overtrust (e.g., automation bias) and undertrust (e.g., disuse). A fundamental challenge, however, is how to characterize the level of trust exhibited by an AI system itself. Here, we propose a novel elicitation method based on iterated in-context learning (Zhu and Griffiths, 2024a) and apply it to elicit trustworthiness priors using the Trust Game from behavioral game theory. The Trust Game is particularly well suited for this purpose because it operationalizes trust as voluntary exposure to risk based on beliefs about another agent, rather than self-reported attitudes. Using our method, we elicit trustworthiness priors from several leading large language models (LLMs) and find that GPT-4.1's trustworthiness priors closely track those observed in humans. Building on this result, we further examine how GPT-4.1 responds to different player personas in the Trust Game, providing an initial characterization of how such models differentiate trust across agent characteristics. Finally, we show that variation in elicited trustworthiness can be well predicted by a stereotype-based model grounded in perceived warmth and competence.
format Preprint
id arxiv_https___arxiv_org_abs_2602_00769
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Eliciting Trustworthiness Priors of Large Language Models via Economic Games
Yan, Siyu
Zhu, Lusha
Zhu, Jian-Qiao
Computation and Language
Artificial Intelligence
One critical aspect of building human-centered, trustworthy artificial intelligence (AI) systems is maintaining calibrated trust: appropriate reliance on AI systems outperforms both overtrust (e.g., automation bias) and undertrust (e.g., disuse). A fundamental challenge, however, is how to characterize the level of trust exhibited by an AI system itself. Here, we propose a novel elicitation method based on iterated in-context learning (Zhu and Griffiths, 2024a) and apply it to elicit trustworthiness priors using the Trust Game from behavioral game theory. The Trust Game is particularly well suited for this purpose because it operationalizes trust as voluntary exposure to risk based on beliefs about another agent, rather than self-reported attitudes. Using our method, we elicit trustworthiness priors from several leading large language models (LLMs) and find that GPT-4.1's trustworthiness priors closely track those observed in humans. Building on this result, we further examine how GPT-4.1 responds to different player personas in the Trust Game, providing an initial characterization of how such models differentiate trust across agent characteristics. Finally, we show that variation in elicited trustworthiness can be well predicted by a stereotype-based model grounded in perceived warmth and competence.
title Eliciting Trustworthiness Priors of Large Language Models via Economic Games
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2602.00769