Wenjing YanShuqing LiCheng Yong-shang
Abstract [Objective] Through the analysis of multiple similarity among users, the problem that the traditional user based collaborative filtering algorithm only uses a single similarity and leads to the decline of recommendation quality is solved. [Method] The original single similarity calculation formula is improved, and the multiple similarity calculation formula is put forward, on this basis, the multiple similarity prediction score is calculated. [Result] By comparison with the traditional user based collaborative filtering algorithm, the method put forward in this paper has outstanding effect. [Limited] Users’ interests will change with time, so time information should be included in the calculation. [Conclusion] From the experiment, we can find that the improved method has better recommendation quality than traditional methods.
Hiep Xuan HuynhNghia Quoc PhanNghi Mong PhamVan-Huy PhamLê Hoàng SơnMohamed Abdel‐BassetMahmoud Ismail
Hiep Xuan HuynhNghia Quoc PhanNghi Mong PhamVan-Huy PhamLê Hoàng SơnMohamed Abdel‐BassetMahmoud M. Ismail
Hiep Xuan HuynhNghia Quoc PhanNghi Mong PhamVan-Huy PhamLê Hoàng SơnMohamed Abdel‐BassetMahmoud Ismail
Fengling XuXiangwu MengLicai Wang