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Analyzing Information Flow in Social Networks for Knowledge Discovery.

机译:分析社交网络中的信息流以进行知识发现。

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摘要

In the last few years the online world has seen a surge in users' social behavior. No longer is the image of a lone user surfing the web relevant anymore and with social sites such as Facebook, Twitter, etc. online users can now actively interact with other users. It is now quite common for web businesses to offer support for friends lists, forums, private message systems, community maintenance tools etc. As as result, not only are users finding more social satisfication online, but the businesses themselves are now able to interact with and monitor the communities around them. Consequently, large amounts of data are being collected from such "social systems'', which capture users' participation in the community. The data can include user-user interactions as well as their activities with time stamps. The data is also unique in that it captures complex social phenomenon in a much more comprehensive manner and at a much more finer granularity, than any other traditional source of communication data. This presents rich opportunities for the development of knowledge discovery algorithms which will find immense value in revealing trends, latent structures or interesting behaviors in these social systems.;In any social system, communication exposes people to information, opinions as well as behavior of other users. According to a well studied phenomenon in social science, summarized in the theory of contagion, users in such networks tend to develop beliefs, attitudes and assumptions that are similar to those of others around them. By "word-of-mouth'' rumors, ideas, opinions, information, etc. can propagate to different regions in the network. The research presented in this thesis explores the analysis of such information flow in social networks from a variety of perspectives, including the network topology, actors' interests, actors' cognition and actors' influence. It is shown that the proposed analyses techniques can discover valuable knowledge regarding community structure, user interests and sentiments, as well as prominent users in the community. Such knowledge is of immense value to online business owners, as it allows them to monitor and identify factors for improving the overall experience of their users.
机译:在过去的几年中,在线世界看到了用户的社交行为激增。单身用户上网和与Facebook,Twitter等社交网站不再相关,网上用户现在可以与其他用户进行积极互动了。现在,网络企业非常普遍地为朋友列表,论坛,私人消息系统,社区维护工具等提供支持。结果,不仅用户在网上找到了更多的社交满意度,而且企业自身现在也能够与之互动并监视周围的社区。因此,从这样的“社会系统”中收集了大量数据,这些数据捕获了用户在社区中的参与,这些数据可以包括用户与用户之间的互动以及带有时间戳的活动。与任何其他传统的通信数据源相比,它以更全面的方式和更精细的粒度捕获复杂的社会现象,这为开发知识发现算法提供了丰富的机会,这些知识发现算法将在揭示趋势,潜在结构中发现巨大的价值。在任何社会系统中,交流都会使人们接触到信息,观点和其他用户的行为,根据社会科学中一种经过深入研究的现象(在传染理论中进行了总结),该网络中的用户倾向于发展与周围其他人相似的信念,态度和假设。意见,信息等可以传播到网络中的不同区域。本文的研究从网络拓扑,行为者的兴趣,行为者的认知和行为者的影响等多种角度探讨了社交网络中信息流的分析。结果表明,所提出的分析技术可以发现有关社区结构,用户兴趣和情感以及社区中杰出用户的宝贵知识。这样的知识对在线业务所有者具有巨大的价值,因为它使他们能够监视和识别改善用户整体体验的因素。

著录项

  • 作者

    Pathak, Nishith.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Computer Science.;Speech Communication.;Sociology General.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 129 p.
  • 总页数 129
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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