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Learning pseudo-tags to augment sparse tagging in hybrid music recommender systems

机译:在混合音乐推荐器系统中学习伪标记以增强稀疏标记

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摘要

Online recommender systems are an important tool that people use to find new music. To generate recommendations, many systems rely on tag representations of music. Such systems, however, suffer from tag sparsity, whereby tracks lack a strong tag representation. Current state-of-the-art techniques that reduce this sparsity problem create hybrid systems using multiple representations, for example both content and tags. In this paper we present a novel hybrid representation that augments sparse tag representations without introducing content directly. Our hybrid representation integrates pseudo-tags learned from content into the tag representation of a track, and a dynamic weighting scheme limits the number of pseudo-tags that are allowed to contribute. Experiments demonstrate that this method allows tags to remain dominant when they provide a strong representation, and pseudo-tags to take over when tags are sparse. We show that our approach significantly improves recommendation quality not only for queries with a sparse tag representation but also those that are well-tagged. Our hybrid approach has potential to be extended to other music representations that are used for recommendation but suffer from data sparsity, such as user profiles.
机译:在线推荐系统是人们用来查找新音乐的重要工具。为了产生推荐,许多系统依赖于音乐的标签表示。然而,这样的系统遭受标签稀疏性的影响,从而轨道缺乏强标签表示。减少这种稀疏性问题的最新技术可以使用多种表示形式(例如内容和标签)创建混合系统。在本文中,我们提出了一种新颖的混合表示形式,可以在不直接引入内容的情况下增强稀疏标签表示形式。我们的混合表示将从内容中学到的伪标记集成到轨道的标记表示中,并且动态加权方案限制了允许贡献的伪标记的数量。实验表明,这种方法允许标签在提供有力的表示时保持主导地位,而伪标签在标签稀疏时可以接管。我们证明,我们的方法不仅可以显着提高标记稀疏表示的查询的推荐质量,还可以显着改善标记质量好的查询的推荐质量。我们的混合方法有可能扩展到用于推荐但受数据稀疏性影响的其他音乐表示形式,例如用户个人资料。

著录项

  • 来源
    《Artificial intelligence》 |2015年第2期|25-39|共15页
  • 作者单位

    School of Computing Science & Digital Media and IDEAS Research Institute, Robert Gordon University, Aberdeen, UK;

    School of Computing Science & Digital Media and IDEAS Research Institute, Robert Gordon University, Aberdeen, UK,IDEAS Research Institute, Robert Gordon University, Garthdee Road, Aberdeen AB10 7GJ, UK;

    School of Computing Science & Digital Media and IDEAS Research Institute, Robert Gordon University, Aberdeen, UK;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Music recommendation; Hybrid representations;

    机译:音乐推荐;混合表示;

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