Cross-domain recommender systems aim to generate or enhance personalized recommendations in a target domain by exploiting knowledge (mainly user preferences) form other source domains. This may beneficial for generating better recommendations, e.g. mitigating the cold-start and sparsity problems in a target domain, and enabling personalized cross-selling for items from multiple domains. In this tutorial, we formalize the cross-domain recommendation problem, categorize and survey state of the art cross-domain recommender systems, discuss related evaluation issues, and outline future research directions on the topic
Data sparseness and cold start problems caused by unbalanced data distribution restrict the further ...
Recommender systems are basically information retrieval systems that offer guidance to users in maki...
We propose a method to generate explainable recommendation rules on cross-domain problems. Our two m...
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaWith the continuous growth in the num...
Abstract. Most of the research studies on recommender systems are focused on single-domain recommend...
Most of the research studies on recommender systems are\ud focused on single-domain recommendations....
Most of the research studies on recommender systems are focused on single-domain recommendations. Wi...
AbstractThis paper proposes a new personalized recommendation model based on domain knowledge to emp...
In recent years, there has been an increasing interest in cross-domain recommender systems. However,...
Traditional recommendation systems are faced with two long-standing obstacles, namely, data sparsity...
University of Technology Sydney. Faculty of Engineering and Information Technology.Recommender syste...
Recommender systems generate responses and suggest items in the required domain. This paper proposes...
Cross-domain recommendation has been proved to be an effective solution to the data sparsity problem...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
Data sparseness and cold start problems caused by unbalanced data distribution restrict the further ...
Recommender systems are basically information retrieval systems that offer guidance to users in maki...
We propose a method to generate explainable recommendation rules on cross-domain problems. Our two m...
Most recommender systems work on single domains, i.e., they recommend items related to the same doma...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaWith the continuous growth in the num...
Abstract. Most of the research studies on recommender systems are focused on single-domain recommend...
Most of the research studies on recommender systems are\ud focused on single-domain recommendations....
Most of the research studies on recommender systems are focused on single-domain recommendations. Wi...
AbstractThis paper proposes a new personalized recommendation model based on domain knowledge to emp...
In recent years, there has been an increasing interest in cross-domain recommender systems. However,...
Traditional recommendation systems are faced with two long-standing obstacles, namely, data sparsity...
University of Technology Sydney. Faculty of Engineering and Information Technology.Recommender syste...
Recommender systems generate responses and suggest items in the required domain. This paper proposes...
Cross-domain recommendation has been proved to be an effective solution to the data sparsity problem...
Cross-domain recommendation has recently emerged as a hot topic in the field of recommender systems....
Data sparseness and cold start problems caused by unbalanced data distribution restrict the further ...
Recommender systems are basically information retrieval systems that offer guidance to users in maki...
We propose a method to generate explainable recommendation rules on cross-domain problems. Our two m...