As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in each of these data sources, cross-domain recommendation is becoming an emerging research topic in the recent years. Cross-domain collaborative filtering aims to transfer the user rating pattern from source (auxiliary) domains to a target domain for the purpose of alleviating the sparsity problem and providing better target recommendations. However, the studies so far have either focused on a limited number of domains that are assumed to be related to each other (such as books and movies), or a division of the same dataset (such as movies) into different domains based on an item characteristic (such as genre). In this paper, we study a broad se...
23rd BCS-IRSG European Colloquium on Information Retrieval Research (ECIR 01), Darmstadt, Germany, 4...
Abstract-One challenge in recommender system is to deal with data sparsity. To handle this issue, so...
The lack of information is an acute challenge in most recommender systems, especially for the collab...
As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in e...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
The problem of data sparsity largely limits the accuracy of recommender systems in collaborative fil...
In recent years, there has been an increasing interest in cross-domain recommender systems. However,...
Most of the research studies on recommender systems are focused on single-domain recommendations. Wi...
Abstract. Most of the research studies on recommender systems are focused on single-domain recommend...
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
One of the most challenging problems in recommender systems based on the collaborative filtering (CF...
Most of the research studies on recommender systems are\ud focused on single-domain recommendations....
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
Recommender systems are basically information retrieval systems that offer guidance to users in maki...
Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowl...
23rd BCS-IRSG European Colloquium on Information Retrieval Research (ECIR 01), Darmstadt, Germany, 4...
Abstract-One challenge in recommender system is to deal with data sparsity. To handle this issue, so...
The lack of information is an acute challenge in most recommender systems, especially for the collab...
As the heterogeneity of data sources are increasing on the web, and due to the sparsity of data in e...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
The problem of data sparsity largely limits the accuracy of recommender systems in collaborative fil...
In recent years, there has been an increasing interest in cross-domain recommender systems. However,...
Most of the research studies on recommender systems are focused on single-domain recommendations. Wi...
Abstract. Most of the research studies on recommender systems are focused on single-domain recommend...
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
One of the most challenging problems in recommender systems based on the collaborative filtering (CF...
Most of the research studies on recommender systems are\ud focused on single-domain recommendations....
© 2013 IEEE. Cross-domain collaborative filtering (CF) aims to share common rating knowledge across ...
Recommender systems are basically information retrieval systems that offer guidance to users in maki...
Cross-domain collaborative filtering (CDCF) solves the sparsity problem by transferring rating knowl...
23rd BCS-IRSG European Colloquium on Information Retrieval Research (ECIR 01), Darmstadt, Germany, 4...
Abstract-One challenge in recommender system is to deal with data sparsity. To handle this issue, so...
The lack of information is an acute challenge in most recommender systems, especially for the collab...