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Personalized recommendations based on users' information-centered social networks.

机译:基于用户以信息为中心的社交网络的个性化推荐。

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摘要

The overwhelming amount of information available today makes it difficult for users to find useful information and as the solution to this information glut problem, recommendation technologies emerged. Among the several streams of related research, one important evolution in technology is to generate recommendations based on users' own social networks. The idea to take advantage of users' social networks as a foundation for their personalized recommendations evolved from an Internet trend that is too important to neglect—the explosive growth of online social networks. In spite of the widely available and diversified assortment of online social networks, most recent social network-based recommendations have concentrated on limited kinds of online sociality (i.e., trust-based networks and online friendships). Thus, this study tried to prove the expandability of social network-based recommendations to more diverse and less focused social networks. The online social networks considered in this dissertation include: 1) a watching network, 2) a group membership, and 3) an academic collaboration network. Specifically, this dissertation aims to check the value of users' various online social connections as information sources and to explore how to include them as a foundation for personalized recommendations.;In our results, users in online social networks shared similar interests with their social partners. An in-depth analysis about the shared interests indicated that online social networks have significant value as a useful information source. Through the recommendations generated by the preferences of social connection, the feasibility of users' social connections as a useful information source was also investigated comprehensively. The social network-based recommendations produced as good as, or sometimes better, suggestions than traditional collaborative filtering recommendations. Social network-based recommendations were also a good solution for the cold-start user problem. Therefore, in order for cold-start users to receive reasonably good recommendations, it is more effective to be socially associated with other users, rather than collecting a few more items. To conclude, this study demonstrates the viability of multiple social networks as a means for gathering useful information and addresses how different social networks of a novelty value can improve upon conventional personalization technology.
机译:当今可用的信息量巨大,用户很难找到有用的信息,并且随着这种信息过剩问题的解决,推荐技术应运而生。在相关研究的多个流中,技术的一项重要进步是根据用户自己的社交网络生成推荐。利用用户的社交网络作为其个性化推荐的基础的想法源于一个互联网趋势,这一趋势非常重要而不能忽略-在线社交网络的爆炸性增长。尽管在线社交网络种类繁多,种类繁多,但最新的基于社交网络的建议仍集中在有限种类的在线社交上(即基于信任的网络和在线友谊)。因此,本研究试图证明基于社交网络的建议可扩展到更加多样化和关注程度较低的社交网络。本文所考虑的在线社交网络包括:1)观察网络; 2)团体会员; 3)学术协作网络。具体来说,本论文旨在检验用户各种在线社交关系作为信息源的价值,并探讨如何将其作为个性化推荐的基础。 。对共享利益的深入分析表明,在线社交网络作为有用的信息源具有巨大的价值。通过对社交关系偏好的建议,还全面研究了用户社交关系作为有用信息源的可行性。基于社交网络的建议所产生的建议与传统协作过滤建议一样好,有时甚至更好。基于社交网络的建议也是解决冷启动用户问题的好方法。因此,为了使冷启动用户能够收到合理的良好推荐,与其他用户进行社交联系比收集更多项目更为有效。总而言之,本研究证明了多种社交网络作为收集有用信息的一种手段的可行性,并探讨了不同的具有新颖性价值的社交网络如何能够在传统的个性化技术上得到改善。

著录项

  • 作者

    Lee, Danielle.;

  • 作者单位

    University of Pittsburgh.;

  • 授予单位 University of Pittsburgh.;
  • 学科 Information Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 343 p.
  • 总页数 343
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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