The Internet has penetrated into all fields. As the most dynamic "sunrise industry,"tourism has also been swept into such a wave of Internet. In such an era of "information overload,"how to find one's favorite attractions among the massive tourist attractions has become a difficult problem. In order to solve this problem, personalized recommendation technology is applied, among which collaborative filtering recommendation technology is one of the core technologies while the collaborative filtering algorithm still has problems. The research and analysis of the algorithm, this paper improves the technology for the problems of low recommendation accuracy that considers user interest changes. It for attribute scoring. It uses the multiattribute score of the item to calculate the user's overall evaluation score of each attribute of the item; for the change of user interest, a time function based on the Ebbinghaus forgetting law is introduced to calculate the user similarity. It is given a certain weight, that is, a time function, to ultimately ensure the accuracy of the recommendation. Exploring the tourism destination recommendation and marketing model based on the collaborative filtering algorithm can enrich the relevant theories of it on the one hand, and on the other hand, it can lay the foundation for building a real tourism recommendation website.
CITATION STYLE
Niu, T., Song, M., Wang, X., & Wang, L. (2022). Tourism Destination Recommendation and Marketing Model Analysis Based on Collaborative Filtering Algorithm. Mobile Information Systems, 2022. https://doi.org/10.1155/2022/5905490
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