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Semi-supervised graph labelling reveals increasing partisanship in the United States Congress

机译:半监督图标签显示美国国会党派的增加

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Abstract Graph labelling is a key activity of network science, with broad practical applications, and close relations to other network science tasks, such as community detection and clustering. While a large body of work exists on both unsupervised and supervised labelling algorithms, the class of random walk-based supervised algorithms requires further exploration, particularly given their relevance to social and political networks. This work refines and expands upon a new semi-supervised graph labelling method, the GLaSS method, that exactly calculates absorption probabilities for random walks on connected graphs. The method models graphs exactly as discrete-time Markov chains, treating labelled nodes as absorbing states. The method is applied to roll call voting data for 42 meetings of the United States House of Representatives and Senate, from 1935 to 2019. Analysis of the 84 resultant political networks demonstrates strong and consistent performance of GLaSS when estimating labels for unlabelled nodes in graphs, and reveals a significant trend of increasing partisanship within the United States Congress.
机译:摘要图标记是网络科学的一项重要活动,具有广泛的实际应用,并且与其他网络科学任务(如社区检测和聚类)紧密相关。尽管在无监督和有监督的标记算法上都存在大量工作,但是基于随机游走的有监督算法的类别需要进一步探索,特别是考虑到它们与社会和政治网络的相关性。这项工作完善并扩展了一种新的半监督图标记方法GLaSS方法,该方法可精确计算连接图上随机游动的吸收概率。该方法将图精确建模为离散时间马尔可夫链,将标记的节点视为吸收状态。该方法适用于1935年至2019年美国众议院和参议院42次会议的唱名表决数据。对84个由此产生的政治网络的分析表明,当估计图中未标记节点的标记时,GLaSS的性能表现始终如一,并显示出美国国会内部党派关系增加的重要趋势。

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