Cross-domain collaborative filtering solves the sparsity problem by transferring rating knowledge across multiple domains. In this paper, we propose a rating-matrix generative model (RMGM) for effective cross-domain collaborative filtering. We first show that the relatedness across multiple rating matrices can be established by finding a shared implicit cluster-level rating matrix, which is next extended to a cluster-level rating model. Consequently, a rating matrix of any related task can be viewed as drawing a set of users and items from a user-item joint mixture model as well as drawing the corresponding ratings from the cluster-level rating model. The combination of these two models gives the RMGM, which can be used to fill the missing ...
Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowl...
ABSTRACT Exploiting social tag information has been a popular way to improve recommender systems in ...
Abstract. Recommender systems always aim to provide recommendations for a user based on historical r...
Cross-domain collaborative filtering solves the sparsity problem by transferring rating knowledge ac...
Transfer learning for collaborative filtering (TLCF) aims to solve the sparsity problem by transferr...
Data sparsity is a major problem for collaborative filtering (CF) techniques in recommender systems,...
Data sparsity due to missing ratings is a major chal-lenge for collaborative filtering (CF) techniqu...
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
Memory-based methods for collaborative filtering predict new ratings by averaging (weighted) ratings...
Recently, recommendation has become a key technology in many online services. The quality of recomme...
The Cross Domain Collaborative Filtering (CDCF) exploits the rating matrices from mul-tiple domains ...
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-it...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
The primary application of collaborate filtering (CF) is to recommend a small set of items to a user...
In the past decade, artificial intelligence (AI) techniques have been successfully applied to recomm...
Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowl...
ABSTRACT Exploiting social tag information has been a popular way to improve recommender systems in ...
Abstract. Recommender systems always aim to provide recommendations for a user based on historical r...
Cross-domain collaborative filtering solves the sparsity problem by transferring rating knowledge ac...
Transfer learning for collaborative filtering (TLCF) aims to solve the sparsity problem by transferr...
Data sparsity is a major problem for collaborative filtering (CF) techniques in recommender systems,...
Data sparsity due to missing ratings is a major chal-lenge for collaborative filtering (CF) techniqu...
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
Memory-based methods for collaborative filtering predict new ratings by averaging (weighted) ratings...
Recently, recommendation has become a key technology in many online services. The quality of recomme...
The Cross Domain Collaborative Filtering (CDCF) exploits the rating matrices from mul-tiple domains ...
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-it...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
The primary application of collaborate filtering (CF) is to recommend a small set of items to a user...
In the past decade, artificial intelligence (AI) techniques have been successfully applied to recomm...
Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowl...
ABSTRACT Exploiting social tag information has been a popular way to improve recommender systems in ...
Abstract. Recommender systems always aim to provide recommendations for a user based on historical r...