Music recommender systems have become a key technology to support the interaction of users with the increasingly larger music catalogs of on-line music streaming services, on-line music shops, and personal devices. An important task in music recommender systems is the automated continuation of music playlists, that enables the recommendation of music streams adapting to given (possibly short) listening sessions. Previous works have shown that applying collaborative filtering to collections of curated music playlists reveals underlying playlist-song co-occurrence patterns that are useful to predict playlist continuations. However, most music collections exhibit a pronounced long-tailed distribution. The majority of songs occur only in few pl...
International audienceThe digitization of music, the emergence of online streaming platforms and mob...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
Many businesses enhance on-line user experience using various recommender systems which have a growi...
Although widely used, the majority of current music recommender systems still focus on recommendatio...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
The goal of this project is to develop a recommender system that derives song recommendations from a...
Recommender systems still mainly base their reasoning on pairwise interactions or information on ind...
As major companies like Spotify, Deezer and Tidal look to improve their music streamingproducts, the...
Data overload is a well-known problem due to the availability of big on-line distributed databases....
State of the art music recommender systems mainly rely on either matrix factorization-based collabor...
The availability of increasingly larger multimedia collections has fostered extensive research in re...
Comunicació presentada a: RecSys Challenge 2018, celebrat el 7 d'octubre de 2018, a Vancouver, Canad...
The task of automatic playlist continuation is generating a list of recommended tracks that can be a...
Current recommender systems aim mainly to generate accurate item recommendations, without properly e...
International audienceModern music platforms like Spotify support users to create new playlists thro...
International audienceThe digitization of music, the emergence of online streaming platforms and mob...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
Many businesses enhance on-line user experience using various recommender systems which have a growi...
Although widely used, the majority of current music recommender systems still focus on recommendatio...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
The goal of this project is to develop a recommender system that derives song recommendations from a...
Recommender systems still mainly base their reasoning on pairwise interactions or information on ind...
As major companies like Spotify, Deezer and Tidal look to improve their music streamingproducts, the...
Data overload is a well-known problem due to the availability of big on-line distributed databases....
State of the art music recommender systems mainly rely on either matrix factorization-based collabor...
The availability of increasingly larger multimedia collections has fostered extensive research in re...
Comunicació presentada a: RecSys Challenge 2018, celebrat el 7 d'octubre de 2018, a Vancouver, Canad...
The task of automatic playlist continuation is generating a list of recommended tracks that can be a...
Current recommender systems aim mainly to generate accurate item recommendations, without properly e...
International audienceModern music platforms like Spotify support users to create new playlists thro...
International audienceThe digitization of music, the emergence of online streaming platforms and mob...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
Many businesses enhance on-line user experience using various recommender systems which have a growi...