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Algorithms for fast estimation of social network centrality measures

机译:快速估计社交网络集中度测度的算法

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Centrality measures are extremely important in the analysis of social networks, with applications such as the identification of the most influential individuals for effective target marketing. Eigenvector centrality and PageRank are among the most useful centrality measures, but computing these measures can be prohibitively expensive for large social networks. This paper explores multiple approaches to improve the computational effort required to compute relative centrality measures. First, we show that small neural networks can be effective in fast estimation of the relative ordering of vertices in a social network based on these centrality measures. Then, we show how network sampling can be used to reduce the running times for calculating the ordering of vertices; degree centrality-based sampling reduces the running time of the key node identification problem. Finally, we propose the approach of incremental updating of centrality measures in dynamic networks.
机译:集中度度量在社交网​​络分析中极为重要,其应用包括识别最有影响力的个人以进行有效的目标营销。特征向量中心性和PageRank是最有用的中心性度量,但是对于大型社交网络而言,计算这些度量可能会非常昂贵。本文探索了多种方法来提高计算相对中心度度量所需的计算量。首先,我们表明,基于这些中心性度​​量,小型神经网络可以有效地快速估计社交网络中顶点的相对顺序。然后,我们说明如何使用网络采样来减少计算顶点顺序的运行时间;基于中心度的采样减少了关键节点识别问题的运行时间。最后,我们提出了动态网络中集中度度量的增量更新方法。

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