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A Study on the Restaurant Recommendation Service App Based on AI Chatbot Using Personalization Information

  • Kim, Heeyoung (Department of Immersive Content Convergence, General graduate school, Kwangwoon University) ;
  • Jung, Sunmi (Department of Tourism Industry, Graduate school of smart convergence, Kwangwoon University) ;
  • Ryu, Gihwan (Department of Immersive Content Convergence, General graduate school, Kwangwoon University)
  • Received : 2020.10.30
  • Accepted : 2020.12.11
  • Published : 2020.12.31

Abstract

The growth of the mobile app markets has made it popular among people who recommend relevant information about restaurants. The recommendation service app based on AI Chatbot is that it can efficiently manage time and finances by making it easy for restaurant consumers to easily access the information they want anytime, anywhere. Eating out consumers use smartphone applications for finding restaurants, making reservations, and getting reviews and how to use them. In addition, social attention has recently been focused on the research of AI chatbot. The Chatbot is combined with the mobile messenger platform and enabling various services due to the text-type interactive service. It also helps users to find the services and data that they need information tersely. Applying this to restaurant recommendation services will increase the reliability of the information in providing personal information. In this paper, an artificial intelligence chatbot-based smartphone restaurant recommendation app using personalization information is proposed. The recommendation service app utilizes personalization information such as gender, age, interests, occupation, search records, visit records, wish lists, reviews, and real-time location information. Users can get recommendations for restaurants that fir their purpose through chatting using AI chatbot. Furthermore, it is possible to check real-time information about restaurants, make reservations, and write reviews. The proposed app uses a collaborative filtering recommendation system, and users receive information on dining out using artificial intelligence chatbots. Through chatbots, users can receive customized services using personal information while minimizing time and space limitations.

Keywords

References

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