Identification and Influence of Tourism Consumption Behavior Based on Artificial Intelligence

Jinxiao Duan

Abstract


Under the background of globalization, tourism has been widely concerned because of its remarkable promotion to economic development. With the rapid development of information technology, especially artificial intelligence (AI), the study of tourism consumption behavior has entered a new stage. This study is devoted to exploring how to use artificial intelligence technologies such as machine learning and natural language processing to identify tourism consumption behavior and analyze its influencing factors, in order to provide accurate market positioning and product promotion strategies for the tourism industry. Through in-depth analysis of online consumer behavior data and social media comments, this study uses random forest and logistic regression analysis methods to identify and analyze the behavior characteristics and preferences of tourism consumers. It is found that specific consumption behaviors and preferences are significantly related to consumers' personal characteristics and social and cultural background. In addition, the model evaluation results reveal the effectiveness and complementarity of random forest and logistic regression in tourism consumption behavior identification. This study fills the gap in the existing research on intelligent identification of tourism consumption behavior, and also provides data-driven decision support for tourism, thus promoting the sustainable development of tourism.


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References


Han H. Consumer behavior and environmental sustainability in tourism and hospitality: a review of theories, concepts, and latest research. J Sustain Tour. 2021; 29(7):1021-42. doi:10.1080/09669582.2021.1903019.

Cui R, Huang S, Chen H, Zhang Q, Li Z. Tourist inertia in satisfaction-revisit relation. Ann Tour Res. 2020; 82:102771. doi:10.1016/j.annals.2019.102771.

Manosuthi N, Lee J-S, Han H. Predicting the revisit intention of volunteer tourists using the merged model between the theory of planned behavior and norm activation model. J Travel Tour Mark. 2020; 37(4):510-32. doi:10.1080/10548408.2020.1784364.

Wang C, Liu S, Zhu S, Hou Z. Exploring the effect of the knowledge redundancy of online reviews on tourism consumer purchase behaviour: based on the knowledge network perspective. Curr Issues Tour. 2023; 26(22):3595-610. doi:10.1080/13683500.2022.2142097.

Manthiou A, Kuppelwieser VG. Consumer Reaction to Decelerated Tourism: Pace, Inherent Virtue, and Environmental Concern. J Travel Res. 2023; 62(7):1510-29. doi:10.1177/00472875221130293.

Guo J, Lu J, Wang R, Xiong Q, Zhang S, Hu K. Classroom behavior recognition driven by deep learning model. J Beijing Norm Univ Nat Sci. 2021; 57(6):905-12.

Xie T. Artificial intelligence and automatic recognition application in B2C e-commerce platform consumer behavior recognition. Soft Comput. 2023; 27(11):7627-37. doi:10.1007/s00500-023-08147-3.

Hu K, Jin J, Zheng F, Weng L, Ding Y. Overview of behavior recognition based on deep learning. Artif Intell Rev. 2023; 56(3):1833-65. doi:10.1007/s10462-022-10210-8.

Bhatt P, Sethi A, Tasgaonkar V, Shroff J, Pendharkar I, Desai A, Sinha P, Deshpande A, Joshi G, Rahate A, Jain P, Walambe R, Kotecha K, Jain NK. Machine learning for cognitive behavioral analysis: datasets, methods, paradigms, and research directions. Brain Inform. 2023; 10(1):18. doi:10.1186/s40708-023-00196-6.

Elayan H, Aloqaily M, Karray F, Guizani M. Internet of Behavior and Explainable AI Systems for Influencing IoT Behavior. IEEE Netw. 2023; 37(1):62-8. doi:10.1109/MNET.009.2100500.

Zhang Q, Abdullah AR, Chong CW, Ali MH. E-Commerce Information System Management Based on Data Mining and Neural Network Algorithms. Comput Intell Neurosci. 2022; 2022:1499801. doi:10.1155/2022/1499801.

Herrera A, Arroyo A, Jimenez A, Herrero A. Artificial Intelligence as Catalyst for the Tourism Sector: A Literature Review. J Univ Comput Sci. 2023; 29(12):1439-60. doi:10.3897/jucs.101550.

Ho PT. Smart Tourism Recommendation Method in Southeast Asia under Big Data and Artificial Intelligence Algorithms. Mob Inf Syst. 2022; 2022:4047501. doi:10.1155/2022/4047501.

Xie D, He Y. Marketing Strategy of Rural Tourism Based on Big Data and Artificial Intelligence. Mob Inf Syst. 2022; 2022:9154351. doi:10.1155/2022/9154351.

2023; 31(7):1325-44. doi:10.1080/09654313.2023.2180321.

Hou S, Zhang S. Application of Artificial Intelligence-Based Sensor Technology in the Recommendation Model of Cultural Tourism Resources. J Sensors. 2022; 2022:3948298. doi:10.1155/2022/3948298.

Ma R, Cai L. Visual analysis of forest sports and health tourism based on artificial intelligence. J Electron Imaging. 2022; 31(6):062008. doi:10.1117/1.JEI.31.6.062008.

Chen C, Wei Z. Role of Artificial Intelligence in travel decision making and tourism product selling. Asia Pac J Tour Res. 2024; 29(3):239-53. doi:10.1080/10941665.2024.2317390.

Xian X. Psychological Factors in Consumer Acceptance of Artificial Intelligence in Leisure Economy: A Structural Equation Model. J Internet Technol. 2021; 22(3):697-705. doi:10.3966/160792642021052203018.




DOI: https://doi.org/10.31449/inf.v48i15.6203

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