International audienceState-of-the-art music recommender systems are based on collaborative filtering, which builds upon learning similarities between users and songs from the available listening data. These approaches inherently face the cold-start problem, as they cannot recommend novel songs with no listening history. Content-aware recommendation addresses this issue by incorporating content information about the songs on top of collaborative filtering. However, methods falling in this category rely on a shallow user/item interaction that originates from a matrix factorization framework. In this work, we introduce neural content-aware collaborative filtering, a unified framework which alleviates these limits, and extends the recently int...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
As one of the traditional entertainment items, video background music has gradually changed from tra...
Deep learning shows its superiority in many domains such as computing vision, nature language proces...
International audienceState-of-the-art music recommender systems are based on collaborative filterin...
State-of-the-art music recommender systems are based on collaborative filtering, which builds upon l...
Although content is fundamental to our music listening preferences, the leading performance in music...
To incorporate content information into collab-orative filtering methods, we train a neural net-work...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
In this paper, we propose a hybrid Neural Collaborative Filtering (NCF) model trained with a multi-o...
Comunicació presentada al 2nd Workshop on Deep Learning for Recommender Systems (DLRS 2017), celebra...
State of the art music recommender systems mainly rely on either matrix factorization-based collabor...
We propose a Joint Neural Collaborative Filtering (J-NCF) method for recommender systems. The J-NCF ...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
As one of the traditional entertainment items, video background music has gradually changed from tra...
Deep learning shows its superiority in many domains such as computing vision, nature language proces...
International audienceState-of-the-art music recommender systems are based on collaborative filterin...
State-of-the-art music recommender systems are based on collaborative filtering, which builds upon l...
Although content is fundamental to our music listening preferences, the leading performance in music...
To incorporate content information into collab-orative filtering methods, we train a neural net-work...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
In this paper, we propose a hybrid Neural Collaborative Filtering (NCF) model trained with a multi-o...
Comunicació presentada al 2nd Workshop on Deep Learning for Recommender Systems (DLRS 2017), celebra...
State of the art music recommender systems mainly rely on either matrix factorization-based collabor...
We propose a Joint Neural Collaborative Filtering (J-NCF) method for recommender systems. The J-NCF ...
Collaborative filtering (CF) approaches, which provide recommendations based on ratings or purchase ...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
As one of the traditional entertainment items, video background music has gradually changed from tra...
Deep learning shows its superiority in many domains such as computing vision, nature language proces...