The Song Interpretation Dataset combines data from two sources: (1) music and metadata from the Music4All Dataset and (2) lyrics and user interpretations from SongMeanings.com. We design a music metadata-based matching algorithm that aligns matching items in the two datasets with each other. In the end, we successfully match 25.47% of the tracks in the Music4All Dataset. The dataset contains audio excerpts from 27,834 songs (30 seconds each, recorded at 44.1 kHz), the corresponding music metadata, about 490,000 user interpretations of the lyric text, and the number of votes given for each of these user interpretations. The average length of the interpretations is 97 words. Music in the dataset covers various genres, of which the top 5 are:...
LFM2b Lyrics Descriptor Analyses This dataset provides lyrics descriptors for 580,000 songs, includ...
The small version of 4MuLA Dataset consists of 9661 musics represents by melspectrogram and metadata...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
The Song Interpretation Dataset combines data from two sources: (1) music and metadata from the Musi...
This dataset was studied on Temporal Analysis and Visualisation of Music paper, in the following lin...
Lyric interpretations can help people understand songs and their lyrics quickly, and can also make i...
Part 10: Mining Humanistic Data Workshop (MHDW)International audienceMusic meta-data comprise a numb...
We report experiments on the use of standard natural language processing (NLP) tools for the analysi...
Advances in text mining and natural language processing have made it viable to study text using meth...
Recently, music complexity has drawn attention from researchers in the Music Information Retrieval (...
Music information retrieval has lately become an important field of information retrieval, because b...
International audienceSince 2017, the goal of the two-million song WASABI database has been to build...
This dataset provides a list of lyrics from 1950 to 2019 describing music metadata as sadness, dance...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
The purpose of this study was to investigate how metadata from Spotify could be used to identify the...
LFM2b Lyrics Descriptor Analyses This dataset provides lyrics descriptors for 580,000 songs, includ...
The small version of 4MuLA Dataset consists of 9661 musics represents by melspectrogram and metadata...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...
The Song Interpretation Dataset combines data from two sources: (1) music and metadata from the Musi...
This dataset was studied on Temporal Analysis and Visualisation of Music paper, in the following lin...
Lyric interpretations can help people understand songs and their lyrics quickly, and can also make i...
Part 10: Mining Humanistic Data Workshop (MHDW)International audienceMusic meta-data comprise a numb...
We report experiments on the use of standard natural language processing (NLP) tools for the analysi...
Advances in text mining and natural language processing have made it viable to study text using meth...
Recently, music complexity has drawn attention from researchers in the Music Information Retrieval (...
Music information retrieval has lately become an important field of information retrieval, because b...
International audienceSince 2017, the goal of the two-million song WASABI database has been to build...
This dataset provides a list of lyrics from 1950 to 2019 describing music metadata as sadness, dance...
In this work we propose a set of new automatic text augmentations that leverage Large Language Model...
The purpose of this study was to investigate how metadata from Spotify could be used to identify the...
LFM2b Lyrics Descriptor Analyses This dataset provides lyrics descriptors for 580,000 songs, includ...
The small version of 4MuLA Dataset consists of 9661 musics represents by melspectrogram and metadata...
The affective aspect of music (popularly known as music mood) is a newly emerging metadata type and ...