In the last decade, collaborative filtering approaches have shown their effectiveness in computing accurate recommendations starting from the user-item matrix. Unfortunately, due to their inner nature, collaborative algorithms work very well with dense matrices but show their limits when they deal with sparse ones. In these cases, encoding user preferences only by means of past ratings may lead to unsatisfactory recommendations. In this paper we propose to exploit past user ratings to evaluate the relevance of every single feature within each profile thus moving from a user-item to a userfeature matrix. We then use matrix factorization techniques to compute recommendations. The evaluation has been performed on two datasets referring to diff...
With the development of the Web, users spend more time accessing information that they seek. As a re...
Abstract. Item recommendation from implicit, positive only feedback is an emerging setup in collabor...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
Matrix factorization is one of the most successful model-based collaborative filtering approaches in...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
Although users ’ preference is semantically reflected in the free-form review texts, this wealth of ...
In this paper, we tackle the incompleteness of user rating history in the context of collaborative f...
Feature-based matrix factorization techniques such as Factorization Machines (FM) have been proven t...
The tremendous growth of the Internet brings with it a massive amount of data that users are exposed...
International audienceMatrix factorization (MF) is one of the most powerful ap- proaches used in the...
International audienceMatrix factorization (MF) is one of the most powerful ap- proaches used in the...
Thanks to their flexibility and scalability, collaborative embedding-based models are widely employe...
With the development of the Web, users spend more time accessing information that they seek. As a re...
Abstract. Item recommendation from implicit, positive only feedback is an emerging setup in collabor...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
Abstract— The sparsity of user-product rating matrices poses a challenge for recommendation models b...
Matrix factorization is one of the most successful model-based collaborative filtering approaches in...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
Although users ’ preference is semantically reflected in the free-form review texts, this wealth of ...
In this paper, we tackle the incompleteness of user rating history in the context of collaborative f...
Feature-based matrix factorization techniques such as Factorization Machines (FM) have been proven t...
The tremendous growth of the Internet brings with it a massive amount of data that users are exposed...
International audienceMatrix factorization (MF) is one of the most powerful ap- proaches used in the...
International audienceMatrix factorization (MF) is one of the most powerful ap- proaches used in the...
Thanks to their flexibility and scalability, collaborative embedding-based models are widely employe...
With the development of the Web, users spend more time accessing information that they seek. As a re...
Abstract. Item recommendation from implicit, positive only feedback is an emerging setup in collabor...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...