Cross-domain Recommendation with Probabilistic Knowledge Transfer

Recommender systems have drawn great attention from both academic and practical area. One challenging and common problem in many recommendation methods is data sparsity, due to the limited number of observed user interaction with the products/services. To alleviate the data sparsity problem, cross-domain recommendation methods are developed to share group-level knowledge in several domains so that recommendation in the domain with scarce data can benefit from domains with relatively abundant data. However, divergence exists in the data of similar domains so that the extracted group-level knowledge is not always suitable to be applied in the target domain, thus recommendation accuracy in the target domain is impaired. In this paper, we propose a cross-domain recommendation method with probabilistic knowledge transfer. The proposed method maintain two sets of group-level knowledge, profiling both domain-shared and domain-specific characteristics of the data. In this way users’ mixed preferences can be profiled comprehensively thus improves the performance of the cross-domain recommender systems. Experiments are conducted on five real-world datasets in three categories: movies, books and music. The results for nine cross-domain recommendation tasks show that our proposed method has improved the accuracy compared with five benchmarks.

[1]  Qiang Yang,et al.  Can Movies and Books Collaborate? Cross-Domain Collaborative Filtering for Sparsity Reduction , 2009, IJCAI.

[2]  Jie Lu,et al.  Structural property-aware multilayer network embedding for latent factor analysis , 2018, Pattern Recognit..

[3]  Michael I. Jordan,et al.  A generalized mean field algorithm for variational inference in exponential families , 2002, UAI.

[4]  Paolo Cremonesi,et al.  Cross-domain recommendations without overlapping data: myth or reality? , 2014, RecSys '14.

[5]  Hanghang Tong,et al.  RaPare: A Generic Strategy for Cold-Start Rating Prediction Problem , 2017, IEEE Transactions on Knowledge and Data Engineering.

[6]  Peng Hao,et al.  Transfer learning using computational intelligence: A survey , 2015, Knowl. Based Syst..

[7]  Luo Si,et al.  Flexible Mixture Model for Collaborative Filtering , 2003, ICML.

[8]  Wei Wang,et al.  Recommender system application developments: A survey , 2015, Decis. Support Syst..

[9]  Qiang Yang,et al.  Transfer learning for collaborative filtering via a rating-matrix generative model , 2009, ICML '09.

[10]  Qian Zhang,et al.  A cross-domain recommender system with consistent information transfer , 2017, Decis. Support Syst..

[11]  Patrick Seemann,et al.  Matrix Factorization Techniques for Recommender Systems , 2014 .

[12]  Qiang Yang,et al.  A unified framework of active transfer learning for cross-system recommendation , 2017, Artif. Intell..

[13]  George Karypis,et al.  Item-based top-N recommendation algorithms , 2004, TOIS.