Existing item-based collaborative filtering (ICF) methods leverage only the relation of collaborative similarity - i.e., the item similarity evidenced by user interactions like ratings and purchases. Nevertheless, there exist multiple relations between items in real-world scenarios, e.g., two movies share the same director, two products complement with each other, etc. Distinct from the collaborative similarity that implies co-interact patterns from the user's perspective, these relations reveal fine-grained knowledge on items from different perspectives of meta-data, functionality, etc. However, how to incorporate multiple item relations is less explored in recommendation research. In this work, we propose Relational Collaborative Filte...
Collaborative filtering is the common technique of predicting the interests of a user by collecting ...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recommender systems based on collaborative filtering have received a great deal of interest over the...
© Springer International Publishing Switzerland 2015. Learning user/item relation is a key issue in ...
To alleviate the data sparsity and cold start issues in recommendation, many researchers leverage us...
Abstract—the most common technique used for recommendations is collaborative filtering. Recommender ...
The existing recommendation algorithms often rely heavily on the original score information in the u...
Recommender systems have been a crucial research area in late years. It’s a tool that provide recomm...
The popularity of movies has increased in recent years. There are thousands of films produced each y...
Collaborative filtering (CF) is one of the dominant techniques used in recommender systems. Most CF-...
(1) Relational fusion of multiple features for the classical regression task (single measure and dim...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
ABSTRACT: Recommendation algorithms are best known for their use on e-commerce Web sites, where they...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Abstract—Recommender systems are web based systems that aim at predicting a customer's interest...
Collaborative filtering is the common technique of predicting the interests of a user by collecting ...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recommender systems based on collaborative filtering have received a great deal of interest over the...
© Springer International Publishing Switzerland 2015. Learning user/item relation is a key issue in ...
To alleviate the data sparsity and cold start issues in recommendation, many researchers leverage us...
Abstract—the most common technique used for recommendations is collaborative filtering. Recommender ...
The existing recommendation algorithms often rely heavily on the original score information in the u...
Recommender systems have been a crucial research area in late years. It’s a tool that provide recomm...
The popularity of movies has increased in recent years. There are thousands of films produced each y...
Collaborative filtering (CF) is one of the dominant techniques used in recommender systems. Most CF-...
(1) Relational fusion of multiple features for the classical regression task (single measure and dim...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
ABSTRACT: Recommendation algorithms are best known for their use on e-commerce Web sites, where they...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Abstract—Recommender systems are web based systems that aim at predicting a customer's interest...
Collaborative filtering is the common technique of predicting the interests of a user by collecting ...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recommender systems based on collaborative filtering have received a great deal of interest over the...