TY - JOUR
T1 - Bridging the Affordance-Actualization Gap in User Preferences for AI-Assisted Trip Planning
AU - Hrankai, Richard
AU - Mak, Barry
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025
Y1 - 2025
N2 - This study explores the adoption of artificial intelligence (AI)-enabled trip-planning assistants, focusing on user interaction dynamics and preferences. Although users appreciate the quick access to basic information offered by AI-powered travel platforms, challenges such as information accuracy and adaptability create a gap between the potential and realized advantages of these technologies. Drawing on affordance-actualization theory, this research analyzes user preferences and their drivers regarding the characteristics of AI-enabled trip planners. The data collected through a stated-choice experiment were analyzed with discrete choice modeling to measure users’ preferences and heterogeneity in their interactions with AI-assisted trip-planning platforms. Findings reveal that preferences are influenced by contextual elements, such as trip purpose, activity type, and the perceived importance of information quality. The systematic investigation of user preferences contributes significantly to the understanding of AI adoption and interaction dynamics in the digital age, offering insights for improving platform design and user satisfaction.
AB - This study explores the adoption of artificial intelligence (AI)-enabled trip-planning assistants, focusing on user interaction dynamics and preferences. Although users appreciate the quick access to basic information offered by AI-powered travel platforms, challenges such as information accuracy and adaptability create a gap between the potential and realized advantages of these technologies. Drawing on affordance-actualization theory, this research analyzes user preferences and their drivers regarding the characteristics of AI-enabled trip planners. The data collected through a stated-choice experiment were analyzed with discrete choice modeling to measure users’ preferences and heterogeneity in their interactions with AI-assisted trip-planning platforms. Findings reveal that preferences are influenced by contextual elements, such as trip purpose, activity type, and the perceived importance of information quality. The systematic investigation of user preferences contributes significantly to the understanding of AI adoption and interaction dynamics in the digital age, offering insights for improving platform design and user satisfaction.
KW - AI travel assistants
KW - best-worst scaling
KW - discrete choice modeling
KW - information quality
KW - personalized travel recommendations
KW - user-centric affordance actualization
UR - http://www.scopus.com/inward/record.url?scp=105000332383&partnerID=8YFLogxK
U2 - 10.1177/00472875251322518
DO - 10.1177/00472875251322518
M3 - Article
SN - 0047-2875
VL - 0
JO - Journal of Travel Research
JF - Journal of Travel Research
IS - 0
ER -