Intention to Use Generative Artificial Intelligence for Hotel Selection Among Consumers: An Explanatory Sequential Investigation

Authors

DOI:

https://doi.org/10.29036/tafksg14

Keywords:

generative Artificial Intelligence (GAI), hotel selection, tourist decision-making, Technology Acceptance Model (TAM), Theory of Planned Behavior (TPB), consumer behavior, mixed-method research, AI adoption in tourist consumption, intention to adopt GAI

Abstract

Hotel choice is highly information-intensive, and generative AI (GAI) increasingly aggregates dispersed hotel data into personalized, conversational recommendations that reduce search and verification effort. Against this backdrop, this study examines consumers' intention to use such tools, adopting an explanatory sequential mixed-methods design and an integrated Technology Acceptance Model-Theory of Planned Behavior (TAM-TPB) framework. The quantitative phase comprises an online survey in China (N = 529; recruited and randomly distributed via a national panel) analyzed with maximum-likelihood structural equation modeling (SEM). The qualitative phase involves six follow-up interviews to interpret results. Findings show that perceived ease of use (PEU) increases perceived usefulness (PU) and attitude (ATT), while ATT and subjective norm (SN) strongly predict intention to use GAI; by contrast, perceived behavioral control (PBC) is non-significant. Interviews clarify a boundary condition: because conversational GAI is perceived as low in complexity, users prioritize information credibility and effort savings over feelings of control, which attenuates PBC's role-especially among experienced travelers who rely on effective existing routines. The study contributes to tourism research by specifying how classic adoption beliefs operate in GAI-assisted hotel choice and by delineating when PBC contributes little to intention. Practical implications are stakeholder-specific: for OTAs/AI vendors (product/data owners), design for verification-effort reduction and provenance/credibility transparency; for hotel managers/marketers, ensure accurate structured property data and activate credible social proof to reinforce ATT and SN. These insights inform the design and deployment of AI-assisted decision tools that help travelers choose hotels faster, with warranted confidence, in real tourism settings.

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Author Biographies

  • Ruizhe Fang, College of Economics and Management, Zhejiang Normal University, Zhejiang, China

    Dr. Ruizhe Fang is a lecturer and Director of Business Administration at the College of Economics and Management, Zhejiang Normal University, China. He holds a Doctor of Philosophy (PhD)  in  Tourism from the Autonomous University of Barcelona (UAB). His research interests focus on tourist behavior, destination management, and marketing.

  • Mingge Tian, Shanghai Institute of Tourism, Shanghai Normal University, Shanghai, China

    Dr. Tian is a tourism expert and has published related articles in journals of SSCI. She is currently teaching and doing research at the Shanghai Institute of Tourism-Shanghai Normal University. She was teaching at the CETT Barcelona School of Tourism, Hospitality and Gastronomy - University of Barcelona, and she was an academic scholar at Waikato Management School of the University of Waikato in New Zealand.  She has served on the executive committee for  Asociación Chino Española para Intercambio de la Lengua y la Cultura (ACHEI) and research fellow of 中国名山名寺名观研究委员会 (Cultural Research Committee of the Mount, Temple and Landscape of China).

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Published

2025-12-01

How to Cite

Fang, R., Feng, X., & Tian, M. (2025). Intention to Use Generative Artificial Intelligence for Hotel Selection Among Consumers: An Explanatory Sequential Investigation. Journal of Tourism and Services, 16(31), 195-219. https://doi.org/10.29036/tafksg14