Prediction of User Demographics from Music Listening Habits

Thomas Krismayer, M. Schedl, Peter Knees, Rick Rabiser
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引用次数: 9

Abstract

Online activities such as social networking, shopping, and consuming multi-media create digital traces often used to improve user experience and increase revenue, e.g., through better-fitting recommendations and targeted marketing. We investigate to which extent the music listening habits of users of the social music platform Last.fm can be used to predict their age, gender, and nationality. We propose a TF-IDF-like feature modeling approach for artist listening information and artist tags combined with additionally extracted features. We show that we can substantially outperform a baseline majority voting approach and can compete with existing approaches. Further, regarding prediction accuracy vs. available listening data we show that even one single listening event per user is enough to outperform the baseline in all prediction tasks. We conclude that personal information can be derived from music listening information, which indeed can help better tailoring recommendations.
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从音乐收听习惯预测用户人口统计
社交网络、购物和多媒体消费等在线活动创造了数字痕迹,通常用于改善用户体验和增加收入,例如通过更合适的推荐和有针对性的营销。最后,我们调查了社交音乐平台用户的音乐听习惯在多大程度上。FM可以用来预测他们的年龄、性别和国籍。我们提出了一种类似tf - idf的特征建模方法,用于艺术家聆听信息和艺术家标签,并结合额外提取的特征。我们表明,我们可以大大优于基准多数投票方法,并可以与现有方法竞争。此外,关于预测精度与可用的监听数据,我们表明,即使每个用户有一个监听事件,也足以在所有预测任务中超越基线。我们的结论是,个人信息可以从音乐收听信息中获得,这确实有助于更好地定制推荐。
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