我的朋友们也喜欢多样化的音乐:同质性和链接预测与用户对主流音乐、新颖性和多样性的偏好有关

Tomislav Duricic, Dominik Kowald, M. Schedl, E. Lex
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引用次数: 4

摘要

同质性描述了相似产生联系的现象,即个体倾向于与在某些方面与自己相似的人建立联系。音乐品味的相似性无疑会影响我们的交友对象,塑造我们的社交圈。最后,我们研究了一个在线音乐平台的同质性。fm关于用户对听主流(M),新颖(N)或多样化(D)内容的偏好。此外,我们根据用户过去听过的艺术家的听力资料(即艺术家资料)与同质性进行比较。最后,我们探讨了用户的艺术家档案以及描述M、N和D的特征在链接预测任务中的效用。我们的研究表明:(1)有朋友关系的用户根据他们的艺术家资料分享相似的音乐品味;(ii)平均而言,衡量两个用户听的音乐的多样性比衡量他们对主流或新颖内容的偏好更能预测友谊,即D的同质性比M和N的同质性更强;(iii)一些用户群体,如高度新奇的寻求者(探索者)表现出强烈的同质性,但低于平均水平的艺术家形象相似性;(iv)与使用艺术家档案相比,使用M、N和D在链接预测准确性上取得了相当的结果,但特征的组合产生了最好的准确性结果,并且(v)如果基于图的特征(如共同邻居)可用,则使用组合特征不会增加价值,使得M、N和D特征主要用于冷启动用户推荐设置,对于友谊关系很少的用户。这项研究的见解将为未来的社交情境感知音乐推荐、用户建模和链接预测工作提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
My friends also prefer diverse music: homophily and link prediction with user preferences for mainstream, novelty, and diversity in music
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 diverse is the music two users listen to is a stronger predictor of friendship than measures of their preferences towards mainstream or novel content, i.e., homophily is stronger for D than for M and N; (iii) some user groups such as high-novelty-seekers (explorers) exhibit strong homophily, but lower than average artist profile similarity; (iv) using M, N and D achieves comparable results on link prediction accuracy compared with using artist profiles, but the combination of features yields the best accuracy results, and (v) using combined features does not add value if graph-based features such as common neighbors are available, making M, N, and D features primarily useful in a cold-start user recommendation setting for users with few friendship connections. The insights from this study will inform future work on social context-aware music recommendation, user modeling, and link prediction.
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