论文标题
在线音乐列表二角网络中偏好行为的普遍性:大数据分析
Universality of preference behaviors in online music-listener bipartite networks: A Big Data analysis
论文作者
论文摘要
我们研究了中国最大的在线音乐平台之一Netease Cloud Music(NCM)的数百万用户的音乐喜好。我们将复杂网络理论和信息科学的方法结合在大数据分析的背景下,以揭示音乐偏好行为形成和演变的基础的统计模式和社区结构。我们的分析解决了音乐影响的衰减模式,用户对音乐的敏感性,年龄和性别差异及其与区域经济指标的关系。我们在用户音乐的两部分网络中采用社区发现,确定了NCM用户人群中的八个主要文化社区。与男性相比,女性用户表现出比男性更高的群体内部变异性,重大过渡发生在25岁左右。莫雷河(Moreveor),音乐品味和妇女的偏好多样性度量也与经济因素更加强烈。然而,尽管音乐曲目的普及程度高度可变,并且发现的文化和人口统计学差异,但我们观察到,随着时间的流逝,音乐偏好的演变遵循了一个类似势力法的衰败功能,而NCM听众对青春期发行的音乐的敏感性最高,在13岁时达到了峰值,我们的发现也表现出了音乐的范围。在线音乐平台中对社区检测和推荐系统设计的广泛含义。
We investigate the formation of musical preferences of millions of users of the NetEase Cloud Music (NCM), one of the largest online music platforms in China. We combine the methods from complex networks theory and information sciences within the context of Big Data analysis to unveil statistical patterns and community structures underlying the formation and evolution of musical preference behaviors. Our analyses address the decay patterns of music influence, users' sensitivity to music, age and gender differences, and their relationship to regional economic indicators. Employing community detection in user-music bipartite networks, we identified eight major cultural communities in the population of NCM users. Female users exhibited higher within-group variability in preference behavior than males, with a major transition occurring around the age of 25. Moreveor, the musical tastes and the preference diversity measures of women were also more strongly associated with economic factors. However, in spite of the highly variable popularity of music tracks and the identified cultural and demographic differences, we observed that the evolution of musical preferences over time followed a power-law-like decaying function, and that NCM listeners showed the highest sensitivity to music released in their adolescence, peaking at the age of 13. Our findings suggest the existence of universal properties in the formation of musical tastes but also their culture-specific relationship to demographic factors, with wide-ranging implications for community detection and recommendation system design in online music platforms.