超越“命中命中”:产生连贯的音乐播放列表继续与正确的轨道

D. Jannach, Lukas Lerche, Iman Kamehkhosh
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引用次数: 65

摘要

自动生成播放列表是音乐推荐的一种特殊形式,也是数字音乐播放应用程序的一个共同特征。这项任务的一个特殊挑战是,推荐的项目不仅要符合一般听众的偏好,而且要与最近播放的曲目一致。在这项工作中,我们提出了一种新的算法方法和优化方案来生成满足这些要求的播放列表延续。在我们的方法中,我们首先使用共享音乐播放列表、音乐元数据和用户偏好的集合,以高精度选择合适的曲目。接下来,我们应用一个通用的重新排序优化方案来生成与最后播放曲目的特征相匹配的播放列表延续。对三个共享播放列表集合的实证评估表明,不同输入信号的组合有助于在曲目选择中获得较高的准确性,重新排序技术既有助于平衡不同的质量优化目标,又有助于进一步提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond "Hitting the Hits": Generating Coherent Music Playlist Continuations with the Right Tracks
Automated playlist generation is a special form of music recommendation and a common feature of digital music playing applications. A particular challenge of the task is that the recommended items should not only match the general listener's preference but should also be coherent with the most recently played tracks. In this work, we propose a novel algorithmic approach and optimization scheme to generate playlist continuations that address these requirements. In our approach, we first use collections of shared music playlists, music metadata, and user preferences to select suitable tracks with high accuracy. Next, we apply a generic re-ranking optimization scheme to generate playlist continuations that match the characteristics of the last played tracks. An empirical evaluation on three collections of shared playlists shows that the combination of different input signals helps to achieve high accuracy during track selection and that the re-ranking technique can both help to balance different quality optimization goals and to further increase accuracy.
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