Statistics show that most tourists log into the main tourism websites to view user reviews or scores before selecting their destinations.However, the existing tourist destination recommendation models neither consider the implicit user preferences nor mine the potential semantics of tourist attractions.To solve the problems, this paper predicts user scores of tourist attractions through stratified sampling, and optimizes the predicted scores with Bayesian personalized ranking (BPR) and improved visual BPR (VBPR).Then, the recommendation system was optimized by the improved VBPR, which decomposes the prediction score matrix and considers visual features.Experimental results fully demonstrate the excellence of the proposed tourist attraction recommendation system.The research findings provide a good reference for online travel agencies to recommend tourist attractions.
Thara AngskunThawatphong PhithakJitimon AngskunQ NguyenD CavadaandF RicciR BurkeJ HerlockerJ KonstanL TerveenJ RiedlB SarwarG KarypisJ KonstanJ RiedlE FiellerH HartleyE PearsonR CampelloE Hruschka
Xiaoyan ZhangHaihua LuoBowei ChenGuibing Guo
Weeriya SupanichSuwanee Kulkarineetham
Ling ChenDandan LyuShanshan YuGencai Chen
Guangli LiTao ZhuHua JinTian YuanZheng-Yu NiuTao LiHongbin Zhang