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Legislative Vote Prediction using Campaign Donations and Fuzzy Hierarchical Communities

机译:使用竞选捐款和模糊分层社区的立法投票预测

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An important aspect of social networks is the discovery and partitioning of the complex graphs into dense sub-networks referred to as communities. The goal of such partitioning is to find groups who have similar attributes or behaviors. In the realm of politics, it is possible to group individuals with similar political behavior by analyzing campaign finance records. In this paper we use fuzzy hierarchical spectral clustering to find communities with campaign finance networks. Multiple experiments were performed using varying edge weighting, number and type of communities, as well as analyzing multiple different years of voting data. The results show that using the full hierarchy of community assignments for legislators is highly predictive of voting behavior in the US House of Representatives and Senate.
机译:社交网络的一个重要方面是将复杂图的发现和划分为称为社区的密集子网络。这种分区的目的是找到具有相似属性或行为的组。在政治领域,可以通过分析竞选财务记录将具有相似政治行为的个人分组。在本文中,我们使用模糊层次谱聚类来查找具有竞选财务网络的社区。使用不同的边缘权重,社区的数量和类型以及分析多个不同年份的投票数据进行了多次实验。结果表明,对议员使用社区分配的完整层次结构可以高度预测美国众议院和参议院的投票行为。

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