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Personalized Text-Based Music Retrieval

机译:基于文本的音乐检索

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摘要

We consider the problem of personalized text-based music retrieval where users' history of preferences are taken into account in addition to their issued textual queries. Current retrieval methods mostly rely on songs meta-data. This limits the query vocabulary. Moreover, it is very costly to gather this information in large collections of music. Alternatively, we use music annotations retrieved from social tagging Websites such as last fm and use them as textual descriptions of songs. Considering a user's profile and using preference patterns of music among all users, as in collaborative filtering approaches, can be useful in providing personalized and more satisfactory results. The main challenge is how to include both users' profiles and the songs meta-data in the retrieval model. In this paper, we propose a hierarchical probabilistic model that takes into account the users' preference history as well as tag co-occurrences in songs. Our model is an extension of LDA where topics are formed as joint clusterings of songs and tags. These topics capture the tag associations and user preferences and correspond to different music tastes. Each user's profile is represented as a distribution over topics which shows the user's interests in different types of music. We will explain how our model can be used for contextual retrieval. Our experimental results show significant improvement in retrieval when user profiles are taken into account.
机译:我们考虑除了发出的文本查询之外,还考虑了用户的首选项历史记录的基于文本的音乐检索问题。当前检索方法主要依赖于歌曲元数据。这限制了查询词汇表。此外,在大量音乐集中收集这些信息是非常昂贵的。或者,我们使用从社交标记网站检索的音乐注释,例如最后一个FM,并将它们用作歌曲的文本描述。考虑到用户的个人资料并在所有用户之间使用所有音乐的偏好模式,如在协同过滤方法中,可以有用在提供个性化和更令人满意的结果。主要挑战是如何在检索模型中包含用户的配置文件和歌曲元数据。在本文中,我们提出了一个分层概率模型,它考虑了用户的偏好历史以及歌曲中的标签共同发生。我们的模型是LDA的延伸,主题形成为歌曲和标签的联合集群。这些主题捕获标签关联和用户偏好,并对应于不同的音乐品味。每个用户的个人资料都表示为具有主题的分布,它显示了用户对不同类型的音乐类型的兴趣。我们将解释我们的模型如何用于上下文检索。我们的实验结果表明,当考虑用户配置文件时,检索的显着改善。

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