Predicting Music Success Based on Users' Comments on Online Social Networks

C. V. Araujo, Rayol Mendonca-Neto, F. Nakamura, E. Nakamura
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引用次数: 20

Abstract

In this paper, we aim at determining whether or not we can predict the success of a music album, based on the comments posted on social networks during 30 days before the album release. For that matter, we focused on the Twitter network for gathering the user comments. As success measures, we considered the Spotify Popularity and the Billboard Units. The reason for those choices is that Spotify represents the most popular type of music consumption today (audio streaming), while Billboard ranking still favors the old school market (physical albums). As a result, we found out that the amount of Positive Tweets (30 days before the album release) can explain 95.5% of the variation in the Spotify Popularity with a simple linear model. On the other hand, we could not find statistical evidence that the volume of comments on Twitter correlates with the album success measured by the Billboard magazine.
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基于用户在线社交网络评论的音乐成功预测
在本文中,我们的目的是根据专辑发行前30天内社交网络上的评论来确定我们是否可以预测音乐专辑的成功。为此,我们专注于Twitter网络来收集用户评论。作为成功的衡量标准,我们考虑了Spotify的人气和Billboard的销量。这些选择的原因是Spotify代表了当今最流行的音乐消费类型(音频流媒体),而Billboard的排名仍然倾向于老派市场(实体专辑)。结果,我们发现正面推文的数量(专辑发行前30天)可以用一个简单的线性模型解释95.5%的Spotify人气变化。另一方面,我们没有找到统计证据表明Twitter上的评论量与Billboard杂志衡量的专辑成功相关。
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