Collaborative and content-based filtering are two paradigms that have been applied in the context of recommender systems and user preference prediction. This paper proposes a novel, unified approach that systematically integrates all available training information such as past user-item ratings as well as attributes of items or users to learn a prediction function. The key ingredient of our method is the design of a suitable kernel or similarity function between user-item pairs that allows simultaneous generalization across the user and item dimensions. We propose an on-line algorithm (JRank) that generalizes perceptron learning. Experimental results on the EachMovie data set show significant improvements over standard approaches
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Abstract—As one of the most popular recommender technolo-gies, Collaborative Filtering (CF) has been...
Collaborative and content-based filtering are two paradigms that have been applied in the context of...
Collaborative and content-based filtering are two paradigms that have been applied in the context ...
Abstract—In order to improve the precision of rating prediction for personalized recommendation onli...
Memory-based methods for collaborative filtering predict new ratings by averaging (weighted) ratings...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
We present a flexible approach to collaborative filtering which stems from basic research results. T...
Recommender Systems typically use techniquesfrom collaborative filtering which recommend itemsthat u...
Collaborative Filtering (CF) systems generate recommendations for a user by aggregating item ratings...
We describe a recommender system which uses a unique combination of content-based and collaborative ...
In Recommender Systems, a large amount of labeled data must be available beforehand to obtain good p...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Recommender systems apply knowledge discovery techniques to the problem of making personalized recom...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Abstract—As one of the most popular recommender technolo-gies, Collaborative Filtering (CF) has been...
Collaborative and content-based filtering are two paradigms that have been applied in the context of...
Collaborative and content-based filtering are two paradigms that have been applied in the context ...
Abstract—In order to improve the precision of rating prediction for personalized recommendation onli...
Memory-based methods for collaborative filtering predict new ratings by averaging (weighted) ratings...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
We present a flexible approach to collaborative filtering which stems from basic research results. T...
Recommender Systems typically use techniquesfrom collaborative filtering which recommend itemsthat u...
Collaborative Filtering (CF) systems generate recommendations for a user by aggregating item ratings...
We describe a recommender system which uses a unique combination of content-based and collaborative ...
In Recommender Systems, a large amount of labeled data must be available beforehand to obtain good p...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Recommender systems apply knowledge discovery techniques to the problem of making personalized recom...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Abstract—As one of the most popular recommender technolo-gies, Collaborative Filtering (CF) has been...