The extent to which the sequence of tracks in music playlists matters to listeners is a disputed question, nevertheless a very important one for tasks such as music recommendation (e.g., automatic playlist generation or continuation). While several user studies already approached this question, results are largely inconsistent. In contrast, in this paper we take a data-driven approach and investigate 704,166 user-generated playlists of a major music streaming provider. In particular, we study the consistency (in terms of variance) of a variety of audio features and metadata between subsequent tracks in playlists, and we relate this variance to the corresponding variance computed on a position-independent set of tracks. Our results show tha...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
The Audio Music Similarity and Retrieval (AMS) task in the annual Music Information Retrieval eXchan...
Recent years have seen a growing focus on automated personalized services, with music recommendation...
The automated generation of music playlists – as supported by modern music services like last.fm or ...
International audiencePlaylist generation is a special form of music recommendation where the proble...
The availability of increasingly larger multimedia collections has fostered extensive research in re...
Most recommendation evaluations in music domain are focused on algorithmic performance: how a recomm...
Playlists have become the main entry point for users to obtain music resources. This study aimed to ...
Music streaming services encompass features that enable the organization of music into playlists. Th...
Algorithms for automatic playlist generation solve the problem of tedious and time consuming manual ...
International audienceThe role of recommendation systems in the diversity of content consumption on ...
The objective of this PhD research is to deepen the un-derstanding of how people listen to music and...
International audienceThe digitization of music, the emergence of online streaming platforms and mob...
Social technologies have revolutionized the world of music and playlists have become the new radios....
Grouping songs together, according to music preferences, mood or other characteristics, is an activi...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
The Audio Music Similarity and Retrieval (AMS) task in the annual Music Information Retrieval eXchan...
Recent years have seen a growing focus on automated personalized services, with music recommendation...
The automated generation of music playlists – as supported by modern music services like last.fm or ...
International audiencePlaylist generation is a special form of music recommendation where the proble...
The availability of increasingly larger multimedia collections has fostered extensive research in re...
Most recommendation evaluations in music domain are focused on algorithmic performance: how a recomm...
Playlists have become the main entry point for users to obtain music resources. This study aimed to ...
Music streaming services encompass features that enable the organization of music into playlists. Th...
Algorithms for automatic playlist generation solve the problem of tedious and time consuming manual ...
International audienceThe role of recommendation systems in the diversity of content consumption on ...
The objective of this PhD research is to deepen the un-derstanding of how people listen to music and...
International audienceThe digitization of music, the emergence of online streaming platforms and mob...
Social technologies have revolutionized the world of music and playlists have become the new radios....
Grouping songs together, according to music preferences, mood or other characteristics, is an activi...
In this paper we provide an overview of the approach we used as team Creamy Fireflies for the ACM Re...
The Audio Music Similarity and Retrieval (AMS) task in the annual Music Information Retrieval eXchan...
Recent years have seen a growing focus on automated personalized services, with music recommendation...