Unveiling music genre structure through common-interest communities
Zhiheng Jiang, Hoai Nguyen Huynh

TL;DR
This paper analyzes the structure of metal music genres by examining user reviews and community networks, revealing genre clusters and features that can improve classification and recommendation systems.
Contribution
It introduces a novel network-based approach using review text and community detection to identify and analyze genre clusters in metal music.
Findings
Identified stable genre clusters through community detection.
Extracted unique features characterizing each genre cluster.
Demonstrated potential for improved genre classification and music recommendation.
Abstract
Using a dataset of more than 90,000 metal music reviews written by over 9,000 users in a period of 15 years, we analyse the genre structure of metal music with the aid of review text information. We model the relationships between genres using a user-oriented network, based on the written reviews. We then perform community detection and employ a network "averaging" method to obtain stable genre clusters, in order to analyse the structures of clusters both locally within each cluster and globally over the entire network. In addition to identifying the clusters, we use Dependency Parsing and modified Term Frequency - Inverse Document Frequency to extract significant and unique features of each cluster. These structures and review text information can allow us to understand how music audience (fans) perceive similar and different genres, and also assist in classifying different genres…
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