Cross-domain recommendation has been proposed to transfer user behavior pattern by pooling together the rating data from multiple domains to alleviate the spar-sity problem appearing in single rating domains. How-ever, previous models only assume that multiple do-mains share a latent common rating pattern based on the user-item co-clustering. To capture diversities among different domains, we propose a novel Probabilistic Cluster-level Latent Factor (PCLF) model to improve the cross-domain recommendation performance. Ex-periments on several real world datasets demonstrate that our proposed model outperforms the state-of-the-art methods for the cross-domain recommendation task. Methodolog
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-it...
As a promising strategy dealing with data sparsity issue, cross-domain recommender systems transfer ...
As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in e...
Cross-domain recommendation has been proposed to transfer user behavior pattern by pooling together ...
Abstract. Recommender systems always aim to provide recommendations for a user based on historical r...
Data across many business domains can be represented by two or more coupled data sets. Correlations ...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Cross-Domain ...
As one promising way to solve the challenging issues of data sparsity and cold start in recommender ...
Venue recommendation strategies are built upon collaborative filtering techniques that rely on matri...
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
© Springer Nature Switzerland AG 2018. Recommender systems have drawn great attention from both acad...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
Collaborative filtering (CF) is a major technique in recommender systems to help users find their po...
© 2013 IEEE. Traditional recommender systems suffer from the data sparsity problem. However, user kn...
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-it...
As a promising strategy dealing with data sparsity issue, cross-domain recommender systems transfer ...
As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in e...
Cross-domain recommendation has been proposed to transfer user behavior pattern by pooling together ...
Abstract. Recommender systems always aim to provide recommendations for a user based on historical r...
Data across many business domains can be represented by two or more coupled data sets. Correlations ...
© 2018 International Joint Conferences on Artificial Intelligence. All right reserved. Cross-Domain ...
As one promising way to solve the challenging issues of data sparsity and cold start in recommender ...
Venue recommendation strategies are built upon collaborative filtering techniques that rely on matri...
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
© Springer Nature Switzerland AG 2018. Recommender systems have drawn great attention from both acad...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
Collaborative filtering (CF) is a major technique in recommender systems to help users find their po...
© 2013 IEEE. Traditional recommender systems suffer from the data sparsity problem. However, user kn...
Collaborative Filtering (CF) aims to predict users’ ratings on items according to historical user-it...
As a promising strategy dealing with data sparsity issue, cross-domain recommender systems transfer ...
As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in e...