Exploring Online Music Listening Behaviors of Musically Sophisticated Users

B. Ferwerda, M. Tkalcic
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引用次数: 6

Abstract

Due to the rise of available online music, a lot of music consumption is moving from traditional offline media to online sources. Online music sources offer almost an unlimited music collection to its users. Hence, how music is consumed by users (e.g., experts) may differ from traditional offline sources. In this work we explored how musically sophisticated users (i.e. experts) consume online music in terms of diversity. To analyze this, we gathered data from two different sources: Last.fm and Spotify. As expertise is defined by the ubiquitousness of experiences, we calculated different diversity measurements to explore how ubiquitous (in terms of diversity) the listening behaviors of users are. We found that different musical sophistication levels correspond to applying diversity related to specific kind of musical characteristics (i.e., artist or genre). Our results can provide knowledge on how systems should be designed to provide better support to expert users.
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探索音乐成熟用户的在线音乐聆听行为
由于在线音乐的兴起,许多音乐消费正在从传统的线下媒体转向在线资源。在线音乐资源为用户提供了几乎无限的音乐收藏。因此,用户(如专家)消费音乐的方式可能与传统的线下来源不同。在这项工作中,我们探讨了音乐复杂的用户(即专家)如何在多样性方面消费在线音乐。为了分析这一点,我们从两个不同的来源收集数据:fm和Spotify。由于专业知识是由经验的普遍性定义的,我们计算了不同的多样性测量值来探索用户的倾听行为有多普遍(就多样性而言)。我们发现,不同的音乐复杂程度对应于与特定类型的音乐特征(即艺术家或流派)相关的应用多样性。我们的结果可以为如何设计系统提供知识,以便为专家用户提供更好的支持。
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