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Measuring playlist diversity for recommendation systems

机译:评估推荐系统的播放列表多样性

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We describe a way to measure the diversity of consumer's musical interests and characterize this diversity using published musical playlists. For each song in the playlist we calculate a set of features, which were optimized for genre recognition, and represent the song as a single point in a multidimensional genre-space. Given the points for a set of songs, we fit an ellipsoid to the data, and then describe the diversity of the playlist by calculating the volume of the enclosing ellipsoid. We compare 887 different playlists, representing nearly 29,000 distinct songs, to collections of different genres and to the size of our entire database. Playlists tend to be less diverse than a genre, and, by our measure, about 5 orders of magnitude smaller than the entire song set. These characteristics are important for recommendation systems, which want to present users with a set of recommendations tuned to each user's diversity.
机译:我们描述了一种测量消费者音乐兴趣多样性并使用已发布的音乐播放列表来表征这种多样性的方法。对于播放列表中的每首歌曲,我们都会计算一组功能,这些功能针对体裁识别进行了优化,并将其表示为多维体裁空间中的单个点。给定一组歌曲的要点,我们将一个椭球体拟合到数据中,然后通过计算封闭的椭球体的体积来描述播放列表的多样性。我们将887种不同的播放列表(代表近29,000首不同的歌曲)与不同流派的集合和整个数据库的大小进行比较。播放列表的多样性往往不如流派,按照我们的衡量,它比整个歌曲集小大约5个数量级。这些特征对于推荐系统很重要,推荐系统希望向用户提供针对每个用户的多样性而调整的一组推荐。

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