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Music Classification Annotations

This dataset contains a collection of annotations for the split-0 test set of the MTG-Jamendo Dataset according to the taxonomies of 15 existing music classification datasets. All the considered taxonomies are single label, including binary and multi-class cases:

  • genre_dortmund: alternative, blues, electronic, folkcountry, funksoulrnb, jazz, pop, raphiphop, rock
  • genre_rosamerica: classic, dance, hip hop, jazz, pop, rhythm and blues, rock, speech
  • genre_tzanetakis: blues, classic, country, disco, hip hop, jazz, metal, pop, reggae, rock
  • genre_electronic: ambeint, dnb, house, techno, trance
  • genre_acoustic: acoustic, non acoustic
  • mood_aggressive: aggressive, non aggressive
  • mood_electronic: electronic, non electronic
  • mood_happy: happy, non happy
  • mood_party: party, non party
  • mood_relaxed: relaxed, non relaxed
  • mood_sad: sad, non sad
  • danceability: danceable, non danceable
  • voice_instrumental: voice, instrumental
  • gender: male, female
  • tonal_atonal: atonal, tonal

There are annotations for the complete split-0 test set for all the taxonomies but those related to genres, where we could only annotate 1,500 tracks. Most tracks were annotated by 3 different annotators using a dedicated annotation tool. This tool forces the user to select a label for the mood-related, danceability, voice_instrumental, and tonal_atonal taxonomies. For the genre-related and voice_instrumental taxonomies there are options unmatched and instrumental for tracks that are not suitable for the taxonomy at hand. We provide two ground truth files: music-classification-annotations-raw.tsv, with all the collected annotations, and music-classification-annotations-clean.tsv, with only the annotations where the three annotators agreed and the answer was not unmatched or instrumental.

The following table shows the number of annotations with perfect inter-annotator agreement and suitable labels:

Taxonomy Agreement rate (%) Number of tracks
genre_dortmund 49 612
genre_rosamerica 52 573
genre_tzanetakis 47 411
genre_electronic 62 180
mood_acoustic 60 6429
mood_aggressive 71 7686
mood_electronic 66 7143
mood_happy 53 5702
mood_party 69 7476
mood_relaxed 57 6163
mood_sad 53 5678
danceability 44 4476
voice_instrumental 87 2070
gender 75 7533
tonal_atonal 87 8756

Usage

The existing tools can be used to load the music classification annotations:

import commons

input_file = '../derived/music-classification-annotations/music-classification-annotations-clean.tsv'
tracks, tags, extra = commons.read_file(input_file)

Annotation format

The annotations follow this naming convention: <taxonomy>---<annotation_1>,<annotation_2>,<annotation_3>. Note that some tracks are missing annotations for some taxonomies or may be annotated by only one or two annotators. This is how the raw annotations for an example track look like:

{
    484424: {
    ...
    'tags': [
        'genre_dortmund---pop,unmatched,unmatched',
        'genre_rosamerica---pop,unmatched,unmatched',
        'genre_tzanetakis---reggae,reggae,reggae',
        ...
        ],
    'genre': set(),
    'mood/theme': set(),
    'instrument': set(),
    'genre_dortmund': {'unmatched', 'pop'},
    'genre_rosamerica': {'unmatched', 'pop'},
    'genre_tzanetakis': {'reggae'}
    ...
    }
    ...
}

In the clean version, we only include taxonomies where the three annotators agreed and the label was not unmatched or instrumental:

{
    484424: {
    ...
    'tags': [
        'genre_tzanetakis---reggae,reggae,reggae',
        'mood_aggressive---not_aggressive,not_aggressive,not_aggressive',
        'mood_happy---happy,happy,happy',
        ...
        ],
    'genre': set(),
    'mood/theme': set(),
    'instrument': set(),
    'genre_tzanetakis': {'reggae'},
    'mood_aggressive': {'not_aggressive'},
    'mood_happy': {'happy'}
    ...
    }
    ...
}

As it can be seen, genre_dortmund and genre_rosamerica are not present in the clean version due to the disagreement among annotators.