Social Tags and Emotions as main Features for the Next Song To Play in Automatic Playlist Continuation

Marco Polignano, Pierpaolo Basile, M. Degemmis, G. Semeraro
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引用次数: 9

Abstract

The broad diffusion over the Internet of songs streaming services points out the need for implementing efficient and personalized strategies for incrementing the fidelity of the customers. This scenario can collect enough information about the user and the items for successfully design a Recommender System for the automatic continuation of playlists of digital contents. In particular, in this work we proposed a strategy for suggesting a set of tracks, starting from a list of songs played by the user, candidate as next to play. The list contains songs that are coherent with the main characteristics of songs already played. In order to collect enough information and for applying a recommendation strategy, we used third-party external sources of information. They provide data about the song, including its popularity, the emotion evoked by its lyrics, low and high-level audio features, lyrics and more. The system highlights the importance to use user-generated tags and emotional features for successfully predicts user next played songs.
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社会标签和情感作为自动播放列表继续播放下一首歌的主要功能
歌曲流媒体服务在互联网上的广泛传播表明,需要实施有效和个性化的策略来增加客户的保真度。这个场景可以收集到足够的关于用户和项目的信息,从而成功地设计了一个推荐系统,用于自动延续数字内容的播放列表。特别是,在这项工作中,我们提出了一种策略,从用户播放的歌曲列表开始,建议一组曲目作为下一个播放。该列表包含与已播放歌曲的主要特征相一致的歌曲。为了收集足够的信息并应用推荐策略,我们使用了第三方外部信息源。它们提供有关歌曲的数据,包括它的受欢迎程度、歌词所唤起的情感、低音频和高音频特征、歌词等等。该系统强调了使用用户生成的标签和情感特征来成功预测用户下一个播放的歌曲的重要性。
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