Playlists are a natural delivery method for music recommendation and discovery systems. Recommender systems offering playlists must strive to make them relevant and enjoyable. In this paper we survey many current means of generating and evaluating playlists. We present a means of comparing playlists in a reduced dimensional space through the use of aggregated tag clouds and topic models. To evaluate the fitness of this measure, we perform prototypical retrieval tasks on playlists taken from radio station logs gathered from Radio Paradise and Yes.com, using tags from Last.fm with the result showing better than random performance when using the query playlist's station as ground truth, while failing to do so when using time of day as ground t...
This thesis is on the subject of content based music playlist generation systems. The primary aim is...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
Music recommenders often rely on experts to classify song facets like genre and mood, but user-gener...
Playlists are a natural delivery method for music recom-mendation and discovery systems. Recommender...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
A framework is described to consider various real world playlist use cases. Auto-matic playlist gene...
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...
Tremendous growth of online music data has given new opportunities for building more effective music...
An automatic music playlist generator called PATS (Personalized Automatic Track Selection) creates p...
Using request radio shows as a base interactive model, we present the Steerable Optimizing Self-Orga...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
abstract: Playlists have become a significant part of the music listening experience today because o...
This thesis is on the subject of content based music playlist generation systems. The primary aim is...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
Music recommenders often rely on experts to classify song facets like genre and mood, but user-gener...
Playlists are a natural delivery method for music recom-mendation and discovery systems. Recommender...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
A framework is described to consider various real world playlist use cases. Auto-matic playlist gene...
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...
Tremendous growth of online music data has given new opportunities for building more effective music...
An automatic music playlist generator called PATS (Personalized Automatic Track Selection) creates p...
Using request radio shows as a base interactive model, we present the Steerable Optimizing Self-Orga...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
abstract: Playlists have become a significant part of the music listening experience today because o...
This thesis is on the subject of content based music playlist generation systems. The primary aim is...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
Music recommenders often rely on experts to classify song facets like genre and mood, but user-gener...