Deep learning shows its superiority in many domains such as computing vision, nature language processing, and speech recognition. In music recommendation, most deep learning-based methods focus on learning users’ temporal preferences using their listening histories. The cold start problem is not addressed, however, and the music characteristics are not fully exploited by these methods. In addition, the music characteristics and the users’ temporal preferences are not combined naturally, which cause the relatively low performance of music recommendation. To address these issues, we proposed a Deep Temporal Neural Music Recommendation model (DTNMR) based on music characteristics and the users’ temporal preferences. We encode...
This paper proposes a personalized music recommendation method based on multidimensional time-series...
Although content is fundamental to our music listening preferences, the leading performance in music...
Music has an increasing impact on people’s daily lives, and a sterling music recommendation algorith...
Recommendation mechanisms have been increasingly popular in recent years when a large number of peop...
Comunicació presentada al 2nd Workshop on Deep Learning for Recommender Systems (DLRS 2017), celebra...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Content-based music classification systems attempt to predict musical attributes of songs directly f...
Recommending music based on a user’s music preference is a way to improve user listening exper...
While personalized music recommendation has changed the way many users listen to music. Graph Neural...
Emotion-aware music recommendations has gained increasing attention in recent years, as music comes ...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
Predicting the product a customer would like to buy is an increasingly important field of study and ...
International audienceState-of-the-art music recommender systems are based on collaborative filterin...
Music streaming services use recommendation systems to improve the customer experience by generating...
This paper proposes a personalized music recommendation method based on multidimensional time-series...
Although content is fundamental to our music listening preferences, the leading performance in music...
Music has an increasing impact on people’s daily lives, and a sterling music recommendation algorith...
Recommendation mechanisms have been increasingly popular in recent years when a large number of peop...
Comunicació presentada al 2nd Workshop on Deep Learning for Recommender Systems (DLRS 2017), celebra...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Content-based music classification systems attempt to predict musical attributes of songs directly f...
Recommending music based on a user’s music preference is a way to improve user listening exper...
While personalized music recommendation has changed the way many users listen to music. Graph Neural...
Emotion-aware music recommendations has gained increasing attention in recent years, as music comes ...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
Predicting the product a customer would like to buy is an increasingly important field of study and ...
International audienceState-of-the-art music recommender systems are based on collaborative filterin...
Music streaming services use recommendation systems to improve the customer experience by generating...
This paper proposes a personalized music recommendation method based on multidimensional time-series...
Although content is fundamental to our music listening preferences, the leading performance in music...
Music has an increasing impact on people’s daily lives, and a sterling music recommendation algorith...