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Multisource Information Fusion Algorithm for Personalized Tourism Destination Recommendation

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  • Laiyan Yun
  • Zhenrong Luo
  • Zaoli Yang

Abstract

In this paper, the existing scenic spot recommendation algorithms ignore the implicit trust and trust transmission of users when dealing with user relationships, and the lack of historical browsing behavior data of users in new city scenes leads to an inaccurate recommendation. In this paper, a personalized scenic spot recommendation method combining user trust relationship and tag preference is proposed. Firstly, the trust degree is introduced when the recommendation quality is poor only considering the similarity of users. By mining the implicit trust relationship of users, the problem that the existing research cannot make recommendations when the direct trust is difficult to obtain is solved, and the data sparsity and cold start problems are effectively alleviated. Secondly, in the process of user interest analysis, the relationship between scenic spots and tags is extended to the relationship among users, scenic spots and tags, and users’ interest preferences are decomposed into long-term preferences for different scenic spots tags, which effectively alleviates the problem of poor recommendation quality when users’ historical tour records are lacking. The personalized tourism recommendation method proposed in this paper effectively integrates many features of social networks and effectively alleviates the problems of data sparseness and feature learning in tourism recommendation based on social networks by using vectorization and deep learning technology. Its research has very important usage scenarios and commercial value in the tourism industry. This model can efficiently mine the association rules between scenic spots in multisource information data. The experimental results show that mining the correlation between the scenic spots selected by tourists can provide effective information for tourism decision-making.

Suggested Citation

  • Laiyan Yun & Zhenrong Luo & Zaoli Yang, 2022. "Multisource Information Fusion Algorithm for Personalized Tourism Destination Recommendation," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-11, September.
  • Handle: RePEc:hin:jnlmpe:3503548
    DOI: 10.1155/2022/3503548
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