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Personalized Recommendation Algorithm Based on Rating System and User Interest Association Network

Personalized Recommendation Algorithm Based on Rating System and User Interest Association Network
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摘要 In most available recommendation algorithms, especially for rating systems, almost all the high rating information is utilized on the recommender system without using any low-rating information, which may include more user information and lead to the accuracy of recommender system being reduced. The paper proposes a algorithm of personalized recommendation (UNP algorithm) for rating system to fully explore the similarity of interests among users in utilizing all the information of rating data. In UNP algorithm, the similarity information of users is used to construct a user interest association network, and a recommendation list is established for the target user with combining the user interest association network information and the idea of collaborative filtering. Finally, the UNP algorithm is compared with several typical recommendation algorithms (CF algorithm, NBI algorithm and GRM algorithm), and the experimental results on Movielens and Netflix datasets show that the UNP algorithm has higher recommendation accuracy. In most available recommendation algorithms, especially for rating systems, almost all the high rating information is utilized on the recommender system without using any low-rating information, which may include more user information and lead to the accuracy of recommender system being reduced. The paper proposes a algorithm of personalized recommendation (UNP algorithm) for rating system to fully explore the similarity of interests among users in utilizing all the information of rating data. In UNP algorithm, the similarity information of users is used to construct a user interest association network, and a recommendation list is established for the target user with combining the user interest association network information and the idea of collaborative filtering. Finally, the UNP algorithm is compared with several typical recommendation algorithms (CF algorithm, NBI algorithm and GRM algorithm), and the experimental results on Movielens and Netflix datasets show that the UNP algorithm has higher recommendation accuracy.
作者 Jiaquan Huang Zhen Jia Jiaquan Huang;Zhen Jia(College of Science, Guilin University of Technology, Guilin, China)
机构地区 College of Science
出处 《Journal of Applied Mathematics and Physics》 2022年第12期3496-3509,共14页 应用数学与应用物理(英文)
关键词 Recommender Systems Association Network SIMILARITY Bipartite Network Collaborative Filtering Recommender Systems Association Network Similarity Bipartite Network Collaborative Filtering
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