The rise of digital music has led to a parallel rise in the need to manage music collections of several thousands of songs on a single device. Manual selection of songs for a music listening experience is a cumbersome task. In this paper, we present an initial exploration of the feasibility of using song signal properties and user context information to assist in automatic song selection. Users listened to music over the course of a month while their context and song selections were tracked. Initial results suggest the use of context information can improve automated song selection when patterns are learned for each individual. Categories and Subject Descriptor
Real-life listening experiences contain a wide range of music types and genres. We create the first ...
Musical mood is the emotion that a piece of music expresses. When musical mood is used in music reco...
Successful music recommendation systems need to incorpo-rate information on at least three levels: t...
As music has become more available especially on music streaming platforms, people have started to h...
Abstract. Contextual information of the listener is only slowly being integrated into music retrieva...
Music tags are commonly used to describe and categorize music. Various auto-tagging models and datas...
Music systems that generate playlists are gaining increasing popularity, yet ways to select songs to...
Large music collections afford the listener flexibility in the form of choice, which enables the lis...
Music preferences are likely to depend on contextual characteristics such as location and activity. ...
This is a user-aware music dataset labeled with the contextual use of each track according to each u...
Personalized and user-aware systems for retrieving multimedia items are becoming increasingly import...
The rapid growth of the Internet and the advancements of the Web technologies have made it possible ...
The dataset is composed of 15 contextual tags extracted based on user's usage through created playli...
Part 7: First Mining Humanistic Data Workshop (MHDW 2012)International audienceAs mobile devices are...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
Real-life listening experiences contain a wide range of music types and genres. We create the first ...
Musical mood is the emotion that a piece of music expresses. When musical mood is used in music reco...
Successful music recommendation systems need to incorpo-rate information on at least three levels: t...
As music has become more available especially on music streaming platforms, people have started to h...
Abstract. Contextual information of the listener is only slowly being integrated into music retrieva...
Music tags are commonly used to describe and categorize music. Various auto-tagging models and datas...
Music systems that generate playlists are gaining increasing popularity, yet ways to select songs to...
Large music collections afford the listener flexibility in the form of choice, which enables the lis...
Music preferences are likely to depend on contextual characteristics such as location and activity. ...
This is a user-aware music dataset labeled with the contextual use of each track according to each u...
Personalized and user-aware systems for retrieving multimedia items are becoming increasingly import...
The rapid growth of the Internet and the advancements of the Web technologies have made it possible ...
The dataset is composed of 15 contextual tags extracted based on user's usage through created playli...
Part 7: First Mining Humanistic Data Workshop (MHDW 2012)International audienceAs mobile devices are...
It is not hyperbole to note that a revolution has occurred in the way that we as a society distribut...
Real-life listening experiences contain a wide range of music types and genres. We create the first ...
Musical mood is the emotion that a piece of music expresses. When musical mood is used in music reco...
Successful music recommendation systems need to incorpo-rate information on at least three levels: t...