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Explicit Modelling of the Implicit Short Term User Preferences for Music Recommendation

机译:音乐推荐的隐式短期用户首选项的显式建模

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Recommender systems are a key component of music sharing platforms, which suggest musical recordings a user might like. People often have implicit preferences while listening to music, though these preferences might not always be the same while they listen to music at different times. For example, a user might be interested in listening to songs of only a particular artist at some time, and the same user might be interested in the top-rated songs of a genre at another time. In this paper we try to explicitly model the short term preferences of the user with the help of Last.fm tags of the songs the user has listened to. With a session defined as a period of activity surrounded by periods of inactivity, we introduce the concept of a subsession, which is that part of the session wherein the preference of the user does not change much. We assume the user preference might change within a session and a session might have multiple subsessions. We use our modelling of the user preferences to generate recommendations for the next song the user might listen to. Experiments on the user listening histories taken from Last.fm indicate that this approach beats the present methodologies in predicting the next recording a user might listen to.
机译:推荐系统是音乐共享平台的关键组成部分,该平台建议用户可能喜欢的录音。人们在听音乐时通常会有隐性的偏好,尽管在不同的时间听音乐时这些偏好可能并不总是相同的。例如,某个用户可能只对某个时间听某个特定艺术家的歌曲感兴趣,而同一用户可能对另一个时间在该流派的顶级歌曲中感兴趣。在本文中,我们尝试借助用户听过的歌曲的Last.fm标签显式地对用户的短期偏好进行建模。在将会话定义为活动时间段和不活动时间段一起的情况下,我们介绍了子会话的概念,这是会话的一部分,其中用户的喜好没有太大变化。我们假设用户首选项在一个会话中可能会更改,并且一个会话可能有多个子会话。我们使用用户首选项的建模为用户可能听的下一首歌曲生成推荐。来自Last.fm的用户收听历史记录的实验表明,这种方法在预测用户可能收听的下一个录音方面优于当前的方法。

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