Logo image
Follow the algorithm: An exploratory investigation of music on YouTube
Journal article   Peer reviewed

Follow the algorithm: An exploratory investigation of music on YouTube

Massimo Airoldi, Davide Beraldo and Alessandro Gandini
Poetics, pp.1-13
01/08/2016

Abstract

YouTube Music Algorithms Genre Network analysis Digital methods
This article presents an exploratory study of the network of associations among 22,141 YouTube music videos retrieved by ‘following’ the platform’s recommender algorithm, which automatically suggests a list of ‘related videos’ to the user in response to the video currently being viewed. As YouTube’s recommendations are predominantly based on users’ aggregated practices of sequential viewing, this study aims to inductively reconstruct the resulting associations between the musical content in order to investigate their underlying meanings. Network analysis detects 50 clusters of tightly connected videos characterised by a strong internal homogeneity across different axes of similarity. We discuss these findings with reference to the literature on music genres and classification, arguing that the emerging clusters can be considered as ‘crowd-generated music categories’. That is, sets of musical content that derive from the repeated, crowd-based actions of sequential viewing by users on YouTube in combination with the platform’s algorithm. Interestingly, 7 out of 50 clusters are characterised by what may be seen as a ‘situational’ culture of music reception by digital audiences. Such culture is not so much founded on music genres as traditionally conceived, but rather on the purposes of reception which are rooted in the context where this takes place.
pdf
Poetics_Airoldi_201608
Restricted Access

Metrics

20 Record Views

Details

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this contribution

Collaboration types
Domestic collaboration
International collaboration
Citation topics
10 Arts & Humanities
10.240 Music
10.240.1566 Music and Identity
Web of Science research areas
Literature
Sociology
Logo image