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Graph-Based Approach on Social Data Mining.

机译:基于图的社交数据挖掘方法。

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摘要

Powered by big data infrastructures, social network platforms are gathering data on many aspects of our daily lives. The online social world is reflecting our physical world in an increasingly detailed way by collecting people's individual biographies and their various of relationships with other people. Although massive amount of social data has been gathered, an urgent challenge remain unsolved, which is to discover meaningful knowledge that can empower the social platforms to really understand their users from different perspectives.;Motivated by this trend, my research addresses the reasoning and mathematical modeling behind interesting phenomena on social networks. Proposing graph based data mining framework regarding to heterogeneous data sources is the major goal of my research. The algorithms, by design, utilize graph structure with heterogeneous link and node features to creatively represent social networks' basic structures and phenomena on top of them.;The graph based heterogeneous mining methodology is proved to be effective on a series of knowledge discovery topics, including network structure and macro social pattern mining such as magnet community detection (87), social influence propagation and social similarity mining (85), and spam detection (86). The future work is to consider dynamic relation on social data mining and how graph based approaches adapt from the new situations.
机译:在大数据基础架构的支持下,社交网络平台正在收集有关我们日常生活许多方面的数据。在线社交世界通过收集人们的个人传记及其与其他人的各种关系,以越来越详细的方式反映了我们的自然世界。尽管已收集了大量的社交数据,但仍存在着亟待解决的挑战,即发现有意义的知识,这些知识可以使社交平台能够从不同的角度真正理解其用户。;基于这种趋势,我的研究致力于推理和数学在社交网络上有趣的现象背后进行建模。提出关于异构数据源的基于图的数据挖掘框架是我研究的主要目标。通过设计,该算法利用具有异构链接和节点特征的图结构来创造性地表示社交网络的基本结构和现象。;基于图的异构挖掘方法被证明对一系列知识发现主题有效,包括网络结构和宏观社会模式挖掘,例如磁铁社区检测(87),社会影响传播和社会相似性挖掘(85)以及垃圾邮件检测(86)。未来的工作是考虑社交数据挖掘的动态关系,以及基于图的方法如何适应新情况。

著录项

  • 作者

    Wang, Guan.;

  • 作者单位

    University of Illinois at Chicago.;

  • 授予单位 University of Illinois at Chicago.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 167 p.
  • 总页数 167
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

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