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Resource recommendation in social annotation systems: A linear-weighted hybrid approach

机译:社会注释系统中的资源推荐:线性加权混合方法

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摘要

Social annotation systems enable the organization of online resources with user-defined keywords. Collectively these annotations provide a rich information space in which users can discover resources, organize and share their finds, and connect to other users with similar interests. However, the size and complexity of these systems can lead to information overload and reduced utility for users. For these reasons, researchers have sought to apply the techniques of recommender systems to deliver personalized views of social annotation systems. To date, most efforts have concentrated on the problem of tag recommendation - personalized suggestions for possible annotations. Resource recommendation has not received the same systematic evaluation, in part because the task is inherently more complex. In this article, we provide a general formulation for the problem of resource recommendation in social annotation systems that captures these variants, and we evaluate two cases: basic resource recommendation and tag-specific resource recommendation. We also propose a linear-weighted hybrid framework for resource recommendation. Using six real-world datasets, we show that its integrative approach is essential for this recommendation task and provides the most adaptability given the varying data characteristics in different social annotation systems. We find that our algorithm is more effective than other more mathematically-complex techniques and has the additional advantages of flexibility and extensibility.
机译:社交注释系统可以使用用户定义的关键字来组织在线资源。这些注释共同提供了一个丰富的信息空间,用户可以在其中发现资源,组织和共享他们的发现,以及与具有相似兴趣的其他用户建立联系。但是,这些系统的大小和复杂性可能导致信息过载并降低用户的实用性。由于这些原因,研究人员试图应用推荐系统的技术来提供社交注释系统的个性化视图。迄今为止,大多数工作都集中在标签推荐的问题上-对可能的注释的个性化建议。资源推荐未得到相同的系统评估,部分原因是任务本质上更加复杂。在本文中,我们为捕获这些变体的社会注释系统中的资源推荐问题提供了一个一般的表述,并且我们评估了两种情况:基本资源推荐和特定于标签的资源推荐。我们还为资源推荐提出了线性加权混合框架。通过使用六个真实世界的数据集,我们证明了其集成方法对于此推荐任务至关重要,并且鉴于不同社会注释系统中数据特征的变化,该方法具有最大的适应性。我们发现我们的算法比其他数学上更复杂的技术更有效,并且具有灵活性和可扩展性的其他优势。

著录项

  • 来源
    《Journal of computer and system sciences》 |2012年第4期|p.1160-1174|共15页
  • 作者单位

    Center for Web Intelligence, School of Computing, DePaul University, 243 South Wabash Avenue, Chicago, IL 60604, United States;

    Center for Web Intelligence, School of Computing, DePaul University, 243 South Wabash Avenue, Chicago, IL 60604, United States;

    Center for Web Intelligence, School of Computing, DePaul University, 243 South Wabash Avenue, Chicago, IL 60604, United States;

    Center for Web Intelligence, School of Computing, DePaul University, 243 South Wabash Avenue, Chicago, IL 60604, United States;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    resource recommendation; social annotation system; hybrid recommenders;

    机译:资源推荐;社会注释系统;混合推荐者;

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