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Neural Networks for Fast Estimation of Social Network Centrality Measures

机译:用于快速估计社会网络中心措施的神经网络

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Centrality measures are extremely important in the analysis of social networks, with applications such as 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 shows that neural networks can be effective in learning and estimating the ordering of vertices in a social network based on these measures, requiring far less computational effort, and proving to be faster than early termination of the power grid method that can be used for computing the centrality measures. Two features describing the size of the social network and two vertex-specific attributes sufficed as inputs to the neural networks, requiring very few hidden neurons.
机译:在社交网络的分析中,集中度量在社交网​​络的分析中非常重要,诸如鉴定最有影响力的个人营销的识别。特征传染媒介中心和PageRank是最有用的中心措施之一,但计算这些措施对于大型社交网络来说可能对昂贵昂贵。本文表明,神经网络可以有效地在学习和估算社交网络中的顶点排序,基于这些措施,需要更少的计算工作,并且证明可以比可用于的电网方法的早期终止更快地终止计算中心度量。描述社交网络大小和两个顶点特定属性的两个特征就是针对神经网络的输入,需要极少的隐藏神经元。

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