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User profiling based on folksonomy information in Web 2.0 for personalized recommender systems

机译:基于Web 2.0中针对民间推荐的信息的用户配置文件,用于个性化推荐系统

摘要

Information overload has become a serious issue for web users. Personalisation can provide effective solutions to overcome this problem. Recommender systems are one popular personalisation tool to help users deal with this issue. As the base of personalisation, the accuracy and efficiency of web user profiling affects the performances of recommender systems and other personalisation systems greatly.ududIn Web 2.0, the emerging user information provides new possible solutions to profile users. Folksonomy or tag information is a kind of typical Web 2.0 information. Folksonomy implies the users‘ topic interests and opinion information. It becomes another source of important user information to profile users and to make recommendations. However, since tags are arbitrary words given by users, folksonomy contains a lot of noise such as tag synonyms, semantic ambiguities and personal tags. Such noise makes it difficult to profile users accurately or to make quality recommendations.ududThis thesis investigates the distinctive features and multiple relationships of folksonomy and explores novel approaches to solve the tag quality problem and profile users accurately. Harvesting the wisdom of crowds and experts, three new user profiling approaches are proposed: folksonomy based user profiling approach, taxonomy based user profiling approach, hybrid user profiling approach based on folksonomy and taxonomy. The proposed user profiling approaches are applied to recommender systems to improve their performances. Based on the generated user profiles, the user and item based collaborative filtering approaches, combined with the content filtering methods, are proposed to make recommendations.ududThe proposed new user profiling and recommendation approaches have been evaluated through extensive experiments. The effectiveness evaluation experiments were conducted on two real world datasets collected from Amazon.com and CiteULike websites. The experimental results demonstrate that the proposed user profiling and recommendation approaches outperform those related state-of-the-art approaches. In addition, this thesis proposes a parallel, scalable user profiling implementation approach based on advanced cloud computing techniques such as Hadoop, MapReduce and Cascading. The scalability evaluation experiments were conducted on a large scaled dataset collected from Del.icio.us website.ududThis thesis contributes to effectively use the wisdom of crowds and expert to help users solve information overload issues through providing more accurate, effective and efficient user profiling and recommendation approaches. It also contributes to better usages of taxonomy information given by experts and folksonomy information contributed by users in Web 2.0.
机译:信息过载已成为Web用户的严重问题。个性化可以提供有效的解决方案来克服此问题。推荐系统是一种流行的个性化工具,可以帮助用户处理此问题。作为个性化的基础,Web用户配置文件的准确性和效率极大地影响推荐系统和其他个性化系统的性能。 ud ud在Web 2.0中,新兴的用户信息为配置文件用户提供了新的解决方案。 Folksonomy或标签信息是一种典型的Web 2.0信息。 Folksonomy意味着用户的主题兴趣和观点信息。它成为描述用户并提出建议的重要用户信息的另一个来源。但是,由于标签是用户给定的任意单词,民俗分类法包含很多噪音,例如标签同义词,语义歧义和个人标签。这种噪声使得难以准确描述用户或提出质量建议。 ud ud本文研究了民俗疗法的独特特征和多重关系,并探索了解决标签质量问题和准确描述用户的新颖方法。收集了群众和专家的智慧,提出了三种新的用户配置方法:基于民俗分类的用户配置方法,基于分类的用户配置方法,基于民俗分类法和分类的混合用户配置方法。拟议的用户配置文件方法应用于推荐系统以改善其性能。基于生成的用户配置文件,提出了基于用户和项目的协作过滤方法,并结合内容过滤方法来提出建议。 ud ud通过广泛的实验对提议的新用户配置文件和推荐方法进行了评估。在从Amazon.com和CiteULike网站收集的两个现实世界数据集上进行了有效性评估实验。实验结果表明,所提出的用户概要分析和推荐方法优于那些相关的最新方法。此外,本文提出了一种基于高级云计算技术(如Hadoop,MapReduce和Cascading)的并行,可扩展的用户配置文件实现方法。在从Del.icio.us网站上收集的大规模数据集上进行了可伸缩性评估实验。 ud ud本论文有助于有效利用人群的智慧和专家,通过提供更准确,有效和高效的信息来帮助用户解决信息过载问题用户配置文件和推荐方法。它还有助于更好地利用专家提供的分类信息和Web 2.0用户提供的民俗分类信息。

著录项

  • 作者

    Liang Huizhi;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
  • 中图分类

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