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http://dx.doi.org/10.12925/jkocs.2020.37.3.473

Design of Deep Learning-based Tourism Recommendation System Based on Perceived Value and Behavior in Intelligent Cloud Environment  

Moon, Seok-Jae (Department of Information Security Engineering, Institute of Information Technology, Kwangwoon University)
Yoo, Kyoung-Mi (Department of Tourism Management, Institute of Information Technology, Kwangwoon University)
Publication Information
Journal of the Korean Applied Science and Technology / v.37, no.3, 2020 , pp. 473-483 More about this Journal
Abstract
This paper proposes a tourism recommendation system in intelligent cloud environment using information of tourist behavior applied with perceived value. This proposed system applied tourist information and empirical analysis information that reflected the perceptual value of tourists in their behavior to the tourism recommendation system using wide and deep learning technology. This proposal system was applied to the tourism recommendation system by collecting and analyzing various tourist information that can be collected and analyzing the values that tourists were usually aware of and the intentions of people's behavior. It provides empirical information by analyzing and mapping the association of tourism information, perceived value and behavior to tourism platforms in various fields that have been used. In addition, the tourism recommendation system using wide and deep learning technology, which can achieve both memorization and generalization in one model by learning linear model components and neural only components together, and the method of pipeline operation was presented. As a result of applying wide and deep learning model, the recommendation system presented in this paper showed that the app subscription rate on the visiting page of the tourism-related app store increased by 3.9% compared to the control group, and the other 1% group applied a model using only the same variables and only the deep side of the neural network structure, resulting in a 1% increase in subscription rate compared to the model using only the deep side. In addition, by measuring the area (AUC) below the receiver operating characteristic curve for the dataset, offline AUC was also derived that the wide-and-deep learning model was somewhat higher, but more influential in online traffic.
Keywords
Intelligent cloud; perceived value; Tourism Behavior Intention; wide and deep learning; tourism recommendation system;
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