TL;DR
This study investigates how music taste similarity, especially diversity preferences, influences online friendship formation and improves link prediction, revealing that diversity is a stronger predictor than mainstream or novelty preferences.
Contribution
The paper introduces a detailed analysis of homophily based on music diversity and preferences, and demonstrates the utility of these features for link prediction in social music platforms.
Findings
Music taste similarity correlates with friendship formation.
Diversity in music listening is a stronger predictor of friendship than mainstream or novelty preferences.
Combining user preferences and artist profiles enhances link prediction accuracy.
Abstract
Homophily describes the phenomenon that similarity breeds connection, i.e., individuals tend to form ties with other people who are similar to themselves in some aspect(s). The similarity in music taste can undoubtedly influence who we make friends with and shape our social circles. In this paper, we study homophily in an online music platform Last.fm regarding user preferences towards listening to mainstream (M), novel (N), or diverse (D) content. Furthermore, we draw comparisons with homophily based on listening profiles derived from artists users have listened to in the past, i.e., artist profiles. Finally, we explore the utility of users' artist profiles as well as features describing M, N, and D for the task of link prediction. Our study reveals that: (i) users with a friendship connection share similar music taste based on their artist profiles; (ii) on average, a measure of how…
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