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Feature-combination hybrid recommender systems for automated music playlist continuation

机译:功能组合混合推荐系统,用于自动音乐播放列表连续

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Music recommender systems have become a key technology to support the interaction of users with the increasingly larger music catalogs of on-line music streaming services, on-line music shops, and personal devices. An important task in music recommender systems is the automated continuation of music playlists, that enables the recommendation of music streams adapting to given (possibly short) listening sessions. Previous works have shown that applying collaborative filtering to collections of curated music playlists reveals underlying playlist-song co-occurrence patterns that are useful to predict playlist continuations. However, most music collections exhibit a pronounced long-tailed distribution. The majority of songs occur only in few playlists and, as a consequence, they are poorly represented by collaborative filtering. We introduce two feature-combination hybrid recommender systems that extend collaborative filtering by integrating the collaborative information encoded in curated music playlists with any type of song feature vector representation. We conduct off-line experiments to assess the performance of the proposed systems to recover withheld playlist continuations, and we compare them to competitive pure and hybrid collaborative filtering baselines. The results of the experiments indicate that the introduced feature-combination hybrid recommender systems can more accurately predict fitting playlist continuations as a result of their improved representation of songs occurring in few playlists.
机译:音乐推荐器系统已经成为支持用户与在线音乐流服务,在线音乐商店和个人设备的越来越大的音乐目录进行交互的关键技术。音乐推荐器系统中的一项重要任务是音乐播放列表的自动延续,这使得音乐流的推荐能够适应给定的(可能是简短的)收听会话。以前的工作表明,对策展的音乐播放列表集合应用协作过滤可以揭示潜在的播放列表-歌曲共现模式,这些模式可用于预测播放列表的连续性。但是,大多数音乐收藏都具有明显的长尾分布。大多数歌曲仅出现在很少的播放列表中,因此,协作过滤无法很好地代表它们。我们介绍了两个功能组合混合推荐系统,它们通过将在策展的音乐播放列表中编码的协作信息与任何类型的歌曲特征向量表示形式进行集成来扩展协作过滤。我们进行离线实验,以评估所提出系统的性能,以恢复被保留的播放列表连续性,并将它们与竞争性的纯混合混合协作基线进行比较。实验结果表明,引入的特征组合混合推荐系统可以改善对播放列表连续性的预测,这是因为它们改善了在少数播放列表中出现的歌曲的表现。

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