We consider the problem of performing sentiment analysis on songs by combining audio and lyrics in a large and varied dataset, using the Million Song Dataset for audio features and the MusicXMatch dataset for lyric information. The algorithms presented on this thesis utilize ensemble classifiers as a method of fusing data vectors from different feature spaces. We find that multimodal classification outperforms using only audio or only lyrics. This thesis argues that utilizing signals from different spaces can account for interclass inconsistencies and leverages class-specific performance. The experimental results show that multimodal classification not only improves overall classification, but is also more consistent across differe...
12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As t...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Detection of emotion in music sounds is an important problem in music indexing. This paper studies t...
In the computer age, managing large data repositories is one of the common challenges, especially f...
This paper presents a novel approach to the task of automatic music genre classification which is ba...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
This research addresses the role of audio and lyrics in the music emotion recognition. Each dimensio...
This paper presents a system for audio classification using multiple binary ensemble classifiers wit...
Περιέχει το πλήρες κείμενοMultimedia data by definition comprises several different types of conten...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
viii, 87 leaves ; 29 cmAutomatic music genre classi cation is a high-level task in the eld of Music...
<p>We propose a multi-modal approach to the music emotion recognition (MER) problem, combining infor...
12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As t...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Detection of emotion in music sounds is an important problem in music indexing. This paper studies t...
In the computer age, managing large data repositories is one of the common challenges, especially f...
This paper presents a novel approach to the task of automatic music genre classification which is ba...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
With the explosive growth of music recordings, automatic classification of music emotion becomes one...
Music mood is a newly emerged metadata type and access point to music information. However, most exi...
Music mood classification has always been an intriguing topic. Lyrics and audio tracks are two major...
This research addresses the role of audio and lyrics in the music emotion recognition. Each dimensio...
This paper presents a system for audio classification using multiple binary ensemble classifiers wit...
Περιέχει το πλήρες κείμενοMultimedia data by definition comprises several different types of conten...
In this paper we present a study on music mood classi-fication using audio and lyrics information. T...
viii, 87 leaves ; 29 cmAutomatic music genre classi cation is a high-level task in the eld of Music...
<p>We propose a multi-modal approach to the music emotion recognition (MER) problem, combining infor...
12th Sound and Music Computing Conference, Maynooth University, Ireland, 26 July - 1 August 2015As t...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
Detection of emotion in music sounds is an important problem in music indexing. This paper studies t...