Saved in:
Bibliographic Details
Main Authors: Sun, Haocan, Liu, Weizi, Wu, Di, Yu, Guoming, Yao, Mike
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.10199
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912642711420928
author Sun, Haocan
Liu, Weizi
Wu, Di
Yu, Guoming
Yao, Mike
author_facet Sun, Haocan
Liu, Weizi
Wu, Di
Yu, Guoming
Yao, Mike
contents Trust is one of the most important factors shaping whether and how people adopt and rely on artificial intelligence (AI). Yet most existing studies measure trust in terms of functionality, focusing on whether a system is reliable, accurate, or easy to use, while giving less attention to the social and emotional dimensions that are increasingly relevant for today's generative AI (GenAI) systems. These systems do not just process information; they converse, respond, and collaborate with users, blurring the line between tool and partner. In this study, we introduce and validate the Human-AI Trust Scale (HAITS), a new measure designed to capture both the rational and relational aspects of trust in GenAI. Drawing on prior trust theories, qualitative interviews, and two waves of large-scale surveys in China and the United States, we used exploratory (n = 1,546) and confirmatory (n = 1,426) factor analyses to identify four key dimensions of trust: Affective Trust, Competence Trust, Benevolence & Integrity, and Perceived Risk. We then applied latent profile analysis to classify users into six distinct trust profiles, revealing meaningful differences in how affective-competence trust and trust-distrust frameworks coexist across individuals and cultures. Our findings offer a validated, culturally sensitive tool for measuring trust in GenAI and provide new insight into how trust evolves in human-AI interaction. By integrating instrumental and relational perspectives of trust, this work lays the foundation for more nuanced research and design of trustworthy AI systems.
format Preprint
id arxiv_https___arxiv_org_abs_2510_10199
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Revisiting Trust in the Era of Generative AI: Factorial Structure and Latent Profiles
Sun, Haocan
Liu, Weizi
Wu, Di
Yu, Guoming
Yao, Mike
Human-Computer Interaction
Artificial Intelligence
Trust is one of the most important factors shaping whether and how people adopt and rely on artificial intelligence (AI). Yet most existing studies measure trust in terms of functionality, focusing on whether a system is reliable, accurate, or easy to use, while giving less attention to the social and emotional dimensions that are increasingly relevant for today's generative AI (GenAI) systems. These systems do not just process information; they converse, respond, and collaborate with users, blurring the line between tool and partner. In this study, we introduce and validate the Human-AI Trust Scale (HAITS), a new measure designed to capture both the rational and relational aspects of trust in GenAI. Drawing on prior trust theories, qualitative interviews, and two waves of large-scale surveys in China and the United States, we used exploratory (n = 1,546) and confirmatory (n = 1,426) factor analyses to identify four key dimensions of trust: Affective Trust, Competence Trust, Benevolence & Integrity, and Perceived Risk. We then applied latent profile analysis to classify users into six distinct trust profiles, revealing meaningful differences in how affective-competence trust and trust-distrust frameworks coexist across individuals and cultures. Our findings offer a validated, culturally sensitive tool for measuring trust in GenAI and provide new insight into how trust evolves in human-AI interaction. By integrating instrumental and relational perspectives of trust, this work lays the foundation for more nuanced research and design of trustworthy AI systems.
title Revisiting Trust in the Era of Generative AI: Factorial Structure and Latent Profiles
topic Human-Computer Interaction
Artificial Intelligence
url https://arxiv.org/abs/2510.10199