Using Adversarial Autoencoders for Multi-Modal Automatic Playlist Continuation

Iacopo Vagliano, Lukas Galke, Florian Mai, A. Scherp
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引用次数: 6

Abstract

The task of automatic playlist continuation is generating a list of recommended tracks that can be added to an existing playlist. By suggesting appropriate tracks, i. e., songs to add to a playlist, a recommender system can increase the user engagement by making playlist creation easier, as well as extending listening beyond the end of current playlist. The ACM Recommender Systems Challenge 2018 focuses on such task. Spotify released a dataset of playlists, which includes a large number of playlists and associated track listings. Given a set of playlists from which a number of tracks have been withheld, the goal is predicting the missing tracks in those playlists. We participated in the challenge as the team Unconscious Bias and, in this paper, we present our approach. We extend adversarial autoencoders to the problem of automatic playlist continuation. We show how multiple input modalities, such as the playlist titles as well as track titles, artists and albums, can be incorporated in the playlist continuation task.
使用对抗性自动编码器进行多模态自动播放列表延续
自动播放列表延续的任务是生成可添加到现有播放列表的推荐曲目列表。通过推荐合适的曲目,即添加到播放列表中的歌曲,推荐系统可以通过简化播放列表的创建来增加用户粘性,并将收听范围扩展到当前播放列表的末尾。ACM推荐系统挑战赛2018专注于这样的任务。Spotify发布了一个播放列表数据集,其中包括大量的播放列表和相关的曲目列表。给定一组播放列表,其中一些曲目已被扣留,目标是预测这些播放列表中缺失的曲目。我们以“无意识偏见”团队的身份参与了这一挑战,并在本文中介绍了我们的方法。我们将对抗性自编码器扩展到自动播放列表延续的问题。我们展示了多种输入方式,例如播放列表标题以及曲目标题、艺术家和专辑,如何被纳入播放列表延续任务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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