12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As the music consumption paradigm moves towards streamingservices, users have access to increasingly large catalogsof music. In this scenario, music classification playsan important role in music discovery. It enables, for example, search by genres or automatic playlist creation based on mood. In this work we study the classification of songmood, using features extracted from lyrics alone, basedon a vector space model representation. Previous work inthis area reached contradictory conclusions based on experimentscarried out using different datasets and evaluationmethodologies. In contrast, we use a large freelyavailabledataset to compare the perf...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As t...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
Comunicació presentada a: International Society for Music Information Retrieval Conference celebrat ...
The mood of a song is a highly relevant feature for exploration and recommendation in large collecti...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
Mood is an emerging metadata type and access point in music digital libraries (MDL) and online music...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...
12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As t...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
Comunicació presentada a: International Society for Music Information Retrieval Conference celebrat ...
The mood of a song is a highly relevant feature for exploration and recommendation in large collecti...
This research addresses the role of lyrics in the music emotion recognition process. Our approach is...
Mood is an emerging metadata type and access point in music digital libraries (MDL) and online music...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
International audienceAutomatic music classification aims at grouping unknown songs in predefined ca...