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The Right Music at the Right Time: Adaptive Personalized Playlists Based on Sequence Modeling

机译:在适当的时间播放适当的音乐:基于序列建模的自适应个性化播放列表

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Recent years have seen a growing focus on automated personalized services, with music recommendations a particularly prominent domain for such contributions. However, while most prior work on music recommender systems has focused on preferences for songs and artists, a fundamental aspect of human music perception is that music is experienced in a temporal context and in sequence. Hence, listeners' preferences also may be affected by the sequence in which songs are being played and the corresponding song transitions. Moreover, a listener's sequential preferences may vary across circumstances, such as in response to different emotional or functional needs, so that different song sequences may be more satisfying at different times. It is therefore useful to develop methods that can learn and adapt to individuals' sequential preferences in real time, so as to adapt to a listener's contextual preferences during a listening session. Prior work on personalized playlists either considered batch learning from large historical data sets, attempted to learn preferences for songs or artists irrespective of the sequence in which they are played, or assumed that adaptation occurs over extended periods of time. Hence, this prior work did not aim to adapt to a listener's current song and sequential preferences in real time, during a listening session. This paper develops and evaluates a novel framework for online learning of and adaptation to a listener's current song and sequence preferences exclusively by interacting with the listener, during a listening session. We evaluate the framework using both real playlist datasets and an experiment with human listeners. The results establish that the framework effectively learns and adapts to a listeners' transition preferences during a listening session, and that it yields a significantly better listener experience. Our research also establishes that future advances of online adaptation to listener's temporal preferences is a valuable avenue for research, and suggests that similar benefits may be possible from exploring online learning of temporal preferences for other personalized services.
机译:近年来,人们越来越关注自动个性化服务,其中音乐推荐是此类贡献的一个特别突出的领域。然而,尽管大多数关于音乐推荐器系统的现有工作都集中在对歌曲和艺术家的偏爱上,但是人类音乐感知的一个基本方面是,音乐是在时间范围内并按顺序进行的。因此,听众的喜好也可能会受到歌曲播放顺序和相应歌曲过渡的影响。此外,听众的顺序偏好可能会因情况而异,例如响应于不同的情感或功能需求,因此不同的歌曲序列可能在不同的时间更令人满意。因此,开发能够实时学习并适应个人的顺序偏好,以便在收听会话期间适应收听者的上下文偏好的方法是有用的。以前有关个性化播放列表的工作要么考虑从大量的历史数据集中进行批量学习,要么尝试学习歌曲或艺术家的喜好,而与播放顺序无关,或者假定改编过程持续了很长时间。因此,该先前的工作并非旨在在收听会话期间实时地适应收听者的当前歌曲和顺序偏好。本文开发并评估了一种新颖的框架,该框架可通过在收听会话期间专门与收听者交互来在线学习和适应收听者当前的歌曲和序列首选项。我们使用真实的播放列表数据集和人类听众进行的实验来评估框架。结果表明,该框架可以有效地学习并适应收听会话期间的收听者的过渡偏好,并且可以产生明显更好的收听者体验。我们的研究还确定,在线适应听众的时间偏好的未来发展是研究的宝贵途径,并表明通过探索在线学习其他个性化服务的时间偏好,可能会获得类似的收益。

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