Journal article 273 views 6 downloads
Travel Recommendations of Tomorrow: Generative Artificial Intelligence and Travel Planning
Journal of Consumer Behaviour
Swansea University Author:
Ellie Ismagilova
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DOI (Published version): 10.1002/cb.70126
Abstract
This study aims to cultivate an initial understanding of travelers' engagement with generative artificial intelligence (GAI) during the travel planning phase. It focuses on its influence on decision-making and intentions for continuous usage in planning tourism activities. Utilizing the stimulu...
| Published in: | Journal of Consumer Behaviour |
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| ISSN: | 1472-0817 1479-1838 |
| Published: |
Wiley
2026
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| Online Access: |
Check full text
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| URI: | https://cronfa.swan.ac.uk/Record/cronfa71687 |
| Abstract: |
This study aims to cultivate an initial understanding of travelers' engagement with generative artificial intelligence (GAI) during the travel planning phase. It focuses on its influence on decision-making and intentions for continuous usage in planning tourism activities. Utilizing the stimulus-organism-response framework and domain literature, data were gathered through semi-structured interviews (UK) and scenario-based questionnaires (USA). The study reveals complex aspects of travelers' behavior, uncovering that while GAI recommendations mitigate the risk of information overload, their influence does not necessarily streamline decision-making. Trust and information retrieval skills surfaced as moderate determinants of the relationship between recommendations and information overload. This work is a pioneer in empirically exploring and quantifying continuance intentions of generative artificial intelligence (GAI) usage, contributing novel insights to electronic Word of Mouth and decision-making literature. |
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| Keywords: |
decision satisfaction; generative artificial intelligence; hospitality; information overload; recommendation quality; review quality; travel |
| College: |
Faculty of Humanities and Social Sciences |
| Funders: |
None |

