题名 |
A Hybrid Collaborative Filtering Model: RSVD Meets Weighted-Network Based Inference |
DOI |
10.6138/JIT.2016.17.6.20160115f |
作者 |
Jiemin Chen;Jianguo Li;Jing Xiao;Yong Tang;Hailin Fu |
关键词 |
Personalized recommendation ; Collaborative filtering ; Regularized singular value decomposition ; Network-based inference |
期刊名称 |
網際網路技術學刊 |
卷期/出版年月 |
17卷6期(2016 / 11 / 01) |
页次 |
1221 - 1233 |
内容语文 |
英文 |
中文摘要 |
In view of the exponential growth of information, a personalized recommendation has been a critical approach to solving the information overload problem recently. As one of the widest applied recommendation methods, Regularized Singular Value Decomposition (RSVD) conveniently fits the user-item rating matrix by low-rank approximation from explicit user feedback. However, implicit information is also very effective in improving recommendation algorithms, such as the degree correlation of the user-item bipartite network. Consequently, in this paper, we propose a hybrid collaborative filtering model named RSVD_WNBI. It builds on the algorithm RSVD which involves the explicit influence of ratings, and further integrates implicit influence of the degree correlation in the user-item bipartite network from Weighted Network-Based Inference (WNBI) algorithm. Experimental results on three real-world datasets show that our algorithm can yield better performance over already widely used methods in the accuracy of recommendation, especially when few user ratings are observed. |
主题分类 |
基礎與應用科學 >
資訊科學 |