User profile as a bridge in cross-domain recommender systems for sparsity reduction

被引:0
作者
Ashish Kumar Sahu
Pragya Dwivedi
机构
[1] Motilal Nehru National Institute of Technology Allahabad,
来源
Applied Intelligence | 2019年 / 49卷
关键词
Cross-domain recommender systems; Recommender systems; Transfer learning; User profile; Matrix factorization;
D O I
暂无
中图分类号
学科分类号
摘要
In the past two decades, recommender systems have been successfully applied in many e-commerce companies. One of the promising techniques to generate personalized recommendations is collaborative filtering. However, it suffers from sparsity problem. Alleviating this problem, cross-domain recommender systems came into existence in which transfer learning mechanism is applied to exploit the knowledge from other related domains. While applying transfer learning, some information should overlap between source and target domains. Several attempts have been made to enhance the performance of collaborative filtering with the help of other related domains in cross-domain recommender systems framework. Although exploiting the knowledge from other domains is still challenging and open problem in recommender systems. In this paper, we propose a method namely User Profile as a Bridge in Cross-domain Recommender Systems (UP-CDRSs) for transferring knowledge between domains through user profile. Firstly, we build a user profile using demographical information of a user, explicit ratings and content information of user-rated items. Thereafter, the probabilistic graphical model is employed to learn latent factors of users and items in both domains by maximizing posterior probability. At last prediction on unrated item is estimated by an inner product of corresponding latent factors of users and items. Validating of our proposed UP-CDRSs method, we conduct series of experiments on various sparsity levels using cross-domain dataset. The results demonstrate that our proposed method substantially outperforms other without and with transfer learning methods in terms of accuracy.
引用
收藏
页码:2461 / 2481
页数:20
相关论文
共 106 条
[1]  
Adomavicius G(2005)Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions IEEE Trans Knowl Data Eng 17 734-749
[2]  
Tuzhilin A(2007)Comparing state-of-the-art collaborative filtering systems Lect Notes Comput Sci 4571 548-132
[3]  
Candillier L(2018)A trust-based collaborative filtering algorithm for E-commerce recommendation system J Ambient Intell Humaniz Comput 0 0-265
[4]  
Meyer F(2013)Recommender systems survey Knowl-Based Syst 46 109-240
[5]  
Boullé M(2017)A new method to find neighbor users that improves the performance of Collaborative Filtering Expert Syst Appl 89 254-540
[6]  
Jiang L(2016)An effective collaborative filtering algorithm based on user preference clustering Appl Intell 45 230-37
[7]  
Cheng Y(2018)A social recommender system using item asymmetric correlation Appl Intell 48 527-63
[8]  
Li Y(2009)Matrix factorization techniques for recommender systems Comput 42 30-190
[9]  
Li J(2017)Mining intrinsic information by matrix factorization-based approaches for collaborative filtering in recommender systems Neurocomputing 249 48-202
[10]  
Yan H(2017)Robust collaborative filtering based on non-negative matrix factorization and R1-norm Knowl-Based Syst 118 177-55