In recent years, there has been growing focus on the study of automated recommender systems. Music recommenda-tion systems serve as a prominent domain for such works, both from an academic and a commercial perspective. A fundamental aspect of music perception is that music is ex-perienced in temporal context and in sequence. In this work we present DJ-MC, a novel reinforcement-learning frame-work for music recommendation that does not recommend songs individually but rather song sequences, or playlists, based on a model of preferences for both songs and song transitions. The model is learned online and is uniquely adapted for each listener. To reduce exploration time, DJ-MC exploits user feedback to initialize a model, which it subsequently...
Although widely used, the majority of current music recommender systems still focus on recommendatio...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
Recommending the most appropriate music is one of the most studied fields in the context of Recommen...
In recent years, there has been growing focus on the study of automated recommender systems. Music r...
Part 3: Big Data Analysis and Machine LearningInternational audienceRecently, there is a surge of re...
Recent years have seen a growing focus on automated personalized services, with music recommendation...
Songs can be well arranged by professional music curators to form a riveting playlist that creates e...
This paper proposes a new mechanism for the creation of music playlists called recommendationassiste...
In this study, we propose a novel music playlist generation method based on a knowledge graph and re...
The objective of this PhD research is to deepen the un-derstanding of how people listen to music and...
The evolution of the internet over the last 30 years has drastically changed the way we find and con...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Music is widely used for mood and emotion regulation in our daily life. As a result, many research w...
As major companies like Spotify, Deezer and Tidal look to improve their music streamingproducts, the...
Although widely used, the majority of current music recommender systems still focus on recommendatio...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
Recommending the most appropriate music is one of the most studied fields in the context of Recommen...
In recent years, there has been growing focus on the study of automated recommender systems. Music r...
Part 3: Big Data Analysis and Machine LearningInternational audienceRecently, there is a surge of re...
Recent years have seen a growing focus on automated personalized services, with music recommendation...
Songs can be well arranged by professional music curators to form a riveting playlist that creates e...
This paper proposes a new mechanism for the creation of music playlists called recommendationassiste...
In this study, we propose a novel music playlist generation method based on a knowledge graph and re...
The objective of this PhD research is to deepen the un-derstanding of how people listen to music and...
The evolution of the internet over the last 30 years has drastically changed the way we find and con...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Music is widely used for mood and emotion regulation in our daily life. As a result, many research w...
As major companies like Spotify, Deezer and Tidal look to improve their music streamingproducts, the...
Although widely used, the majority of current music recommender systems still focus on recommendatio...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
Recommending the most appropriate music is one of the most studied fields in the context of Recommen...