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Partitioning and Scaling Signed Bipartite Graphs for Polarized Political Blogosphere

机译:偏振政治博客圈的分区和缩放符号二分图

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Blogosphere plays an increasingly important role as a forum for public debate. In this paper, given a mixed set of blogs debating a set of political issues from opposing camps, we use signed bipartite graphs for modeling debates, and we propose an algorithm for partitioning both the blogs, and the issues (i.e. topics, leaders, etc.) comprising the debate into binary opposing camps. Simultaneously, our algorithm scales both the blogs and the underlying issues on a univariate scale. Using this scale, a researcher can identify moderate and extreme blogs within each camp, and polarizing vs. unifying issues. Through performance evaluations we show that our proposed algorithm provides an effective solution to the problem, and performs much better than existing baseline algorithms adapted to solve this new problem. In our experiments, we used both real data from political blogosphere and US Congress records, as well as synthetic data which were obtained by varying polarization and degree distribution of the vertices of the graph to show the robustness of our algorithm.
机译:Blogsphere扮演着越来越重要的作用,作为公开辩论的论坛。在本文中,鉴于一组混合博客辩论一套从反对阵营的一系列政治问题,我们使用签名的二角形图来建模辩论,我们提出了一种分区博客和问题的算法(即主题,领导者等。)包括辩论进入二元对立营地。同时,我们的算法将博客和底层问题缩放到单变量级别。使用此规模,研究人员可以识别每个阵营内的中等和极端博客,并偏振与统一问题。通过性能评估,我们显示我们所提出的算法为问题提供了有效的解决方案,并且比适于解决这一新问题的现有基线算法更好地执行。在我们的实验中,我们使用了政治博客圈和美国国会记录的真实数据,以及通过改变图形顶点的偏振和度分布来获得的合成数据来显示我们算法的鲁棒性。

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