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Context-Aware Music Recommendation Based on Latent Topic Sequential Patterns

机译:基于潜在主题顺序模式的情境感知音乐推荐

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Contextual factors can greatly influence the users' preferences in listening to music. Although it is hard to capture these factors directly, it. is possible to see their effects on the sequence of songs liked by the user in his/her current interaction with the system. In this paper, we present a context-aware music recommender system which infers contextual information based on the most recent sequence of songs liked by the user. Our approach mines the top frequent tags for songs from social tagging Web sites and uses topic modeling to determine a set of latent topics for each song, representing different contexts. Using a database of human-compiled play lists, each playlist is mapped into a sequence of topics and frequent sequential patterns are discovered among these topics. These patterns represent frequent sequences of transitions between the latent topics representing contexts. Given a sequence of songs in a user's current interaction, the discovered patterns are used to predict the next topic in the playlist. The predicted topics art? then used to post-filter the initial ranking produced by a traditional recommendation algorithm. Our experimental evaluation suggests that our system can help produce better recommendations in comparison to a conventional recom-mender system, based on collaborative or content-based filtering. Furthermore, the topic modeling approach proposed here is also useful in providing better insight into the underlying reasons for song selection and in applications such as playlist construction and context prediction.
机译:上下文因素会极大地影响用户在听音乐时的偏好。尽管很难直接捕获这些因素,但确实如此。可以在用户当前与系统的互动中看到它们对用户喜欢的歌曲序列的影响。在本文中,我们介绍了一种上下文感知音乐推荐器系统,该系统根据用户喜欢的歌曲的最新序列来推断上下文信息。我们的方法从社交标签网站中挖掘歌曲的最常见标签,并使用主题建模来确定每首歌曲的一组潜在主题,这些主题代表不同的上下文。使用人工编译的播放列表数据库,每个播放列表都映射到一个主题序列中,并且在这些主题中发现了频繁的顺序模式。这些模式表示潜在主题之间的过渡频繁序列,这些潜在主题表示上下文。给定用户当前交互中的歌曲序列,发现的模式将用于预测播放列表中的下一个主题。预测的主题艺术?然后用于对传统推荐算法产生的初始排名进行后过滤。我们的实验评估表明,与基于协作或基于内容的过滤的常规推荐系统相比,我们的系统可以帮助产生更好的建议。此外,此处提出的主题建模方法还可用于更好地了解歌曲选择的根本原因以及在诸如播放列表构建和上下文预测之类的应用中。

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