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Utilizing user tag-based interests in recommender systems for social resource sharing websites

机译:在推荐器系统中利用基于用户标签的兴趣进行社交资源共享网站

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摘要

Recently collaborative tagging, also known as "folksonomy" in Web 2.0, allows users to collaboratively create and manage tags to classify and categorize dynamic content for searching and sharing. A user's interest in social resources usually changes with time in such a dynamic and information rich environment. Additionally, a social network is one innovative characteristic in social resource sharing websites. The information from a social network provides an inference of a certain user's interests based on the interests of this user's network neighbors. To handle the problem of personalized interests changing gradually with time, and to utilize the benefit of the social network, this study models a personalized user interest, incorporating frequency, recency, and duration of tag-based information, and performs collaborative recommendations using the user's social network in social resource sharing websites. The proposed method includes finding neighbors from the "social friends" network by using collaborative filtering and recommending similar resource items to the users by using content-based filtering. This study examines the proposed system's performance using an experimental dataset collected from a social bookmarking website. The experimental results show that the hybridization of user's preferences with frequency, recency, and duration plays an important role, and provides better performances than traditional collaborative recommendation systems. The experimental results also reveal that the friend network information can successfully collaborate, thus improving the collaborative recommendation process.
机译:最近,协作标记(在Web 2.0中也称为“民俗分类法”)允许用户协作创建和管理标记,以对动态内容进行分类和分类,以进行搜索和共享。在这种动态且信息丰富的环境中,用户对社交资源的兴趣通常会随着时间而变化。另外,社交网络是社交资源共享网站中的一个创新特征。来自社交网络的信息基于该用户的网络邻居的兴趣提供了某个用户的兴趣的推断。为了处理个性化兴趣随时间逐渐变化的问题,并利用社交网络的优势,本研究对个性化用户兴趣进行了建模,并结合了基于标签的信息的频率,新近度和持续时间,并使用用户的社会资源共享网站中的社交网络。所提出的方法包括通过使用协作过滤从“社交朋友”网络中找到邻居,以及通过使用基于内容的过滤向用户推荐相似的资源项。这项研究使用从社交书签网站收集的实验数据集来检查提议的系统的性能。实验结果表明,用户偏好与频率,新近度和持续时间的混合起着重要作用,并且比传统的协作推荐系统具有更好的性能。实验结果还表明,朋友网络信息可以成功协作,从而改善了协作推荐过程。

著录项

  • 来源
    《Knowledge-Based Systems》 |2014年第1期|86-96|共11页
  • 作者单位

    Department of Information Management, National Kaohsiung First University of Science and Technology, 2, Juoyue Rd., Nantz District, Kaohsiung 811, Taiwan;

    Laboratory of Business Intelligence and Data Mining, National Kaohsiung First University of Science and Technology, 2, Juoyue Rd., Nantz District, Kaohsiung 811, Taiwan;

    Laboratory of Business Intelligence and Data Mining, National Kaohsiung First University of Science and Technology, 2, Juoyue Rd., Nantz District, Kaohsiung 811, Taiwan;

    Laboratory of Business Intelligence and Data Mining, National Kaohsiung First University of Science and Technology, 2, Juoyue Rd., Nantz District, Kaohsiung 811, Taiwan;

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

    Collaborative recommendation; Folksonomy; Social tagging; Tag; Social resource sharing; Personalization;

    机译:协同推荐;Folksonomy;社交标签;标签;社会资源共享;个性化;

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