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Modeling trust and influence on blogosphere using link polarity.

机译:使用链接极性对信任度和对Blogosphere的影响进行建模。

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摘要

There is a growing interest in exploring the role of social networks for understanding how communities and individuals spread influence. In a densely connected world where much of our communication happens online, social media and networks have a great potential in influencing our thoughts and actions. The key contribution of our work is generation of a fully-connected polar social network graph from the sparsely connected social network graph in the context of blogs, where the vertex represents a blogger and the weight of an edge in the polar network represents the bias/trust/distrust between its connecting vertices (the source and destination bloggers). Our approach uses the link structure of blog graph to associate sentiments with the links connecting two blogs. (By link we mean the url that blogger a uses in his blog post to refer to post from blogger b). We term this sentiment as link polarity and the sign and magnitude of this value is based on the sentiment of text surrounding the link. We then use trust propagation models to spread this sentiment from a subset of connected blogs to other blogs to generate the fully connected polar blog graph. Our simple heuristics for analysis of text surrounding links and generation of missing polar links (links with positive or negative sentiment) using trust propagation is highly applicable for domains having weak link structure. This work has numerous applications such as finding "like minded" blogs, detecting influential bloggers, locating bloggers with specific biases about a predefined set of topics etc. Our experimental validation on determining "like minded" blogs on the political blogosphere demonstrates the potential of using polar links for more generic problems such as detecting trustworthy nodes in web graphs.
机译:探索社交网络以了解社区和个人如何传播影响力的兴趣日益浓厚。在一个紧密连接的世界中,我们的大部分沟通都是在线进行的,社交媒体和网络在影响我们的思想和行动方面具有巨大的潜力。我们工作的主要贡献是在博客的背景下从稀疏连接的社交网络图生成完全连接的极性社交网络图,其中顶点表示博客作者,而极性网络中边缘的权重表示偏差/其连接顶点(源博客博客和目标博客作者)之间的信任/不信任。我们的方法使用博客图的链接结构将情感与连接两个博客的链接相关联。 (通过链接,我们是指博客作者a在他的博客文章中用来引用博客作者b的文章的网址)。我们称这种情感为链接极性,并且该值的符号和大小基于链接周围文本的情感。然后,我们使用信任传播模型将这种情绪从连接的博客子集传播到其他博客,以生成完全连接的极坐标博客图。我们用于分析文本周围链接和使用信任传播生成缺失的极性链接(具有正面或负面情绪的链接)的简单启发式方法非常适用于链接结构较弱的域。这项工作有许多应用程序,例如查找“志趣相投”的博客,检测有影响力的博客作者,针对特定的预定义主题对具有特定偏见的博客作者进行定位等。我们在政治博客圈中确定“志趣相投”的博客的实验验证表明了使用极性链接,以解决更常见的问题,例如在Web图形中检测可信赖的节点。

著录项

  • 作者

    Kale, Anubhav.;

  • 作者单位

    University of Maryland, Baltimore County.;

  • 授予单位 University of Maryland, Baltimore County.;
  • 学科 Computer Science.
  • 学位 M.S.
  • 年度 2007
  • 页码 58 p.
  • 总页数 58
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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