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Inter-layer similarity-based eigenvector centrality measures for temporal networks

机译:基于层间相似性的时间网络的特征传染媒介措施

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摘要

Identifying the influential nodes in temporal networks has attracted lots of attention recently. In this paper, we present an Improved Eigenvector-based Centrality Measures (IECM) for temporal networks by regarding the coupling strength between proximity layers as the inter-layer similarity. Compared with the results of the nodes' influences got by temporal global efficiency for two real networks, the IECM method could identify influential nodes more accurately than the traditional ECM method. Regarding to the fact that different kinds of measurements have different performances, we introduce the Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS) method to measure the global performance. Specially, when the inter-layer coupling strength omega set as 1 in the ECM method, the accuracy could be averagely enhanced 18.75% and 29.65% at each time layer for Workspace and Enrons datasets respectively, which indicates that measuring the inter-layer coupling strength plays an important role for identifying the influential nodes. (C) 2018 Elsevier B.V, All rights reserved.
机译:识别时间网络影响力的节点已经吸引了大量的关注最近。在本文中,我们通过把作为层间相似性接近层间的耦合强度呈现为时间的网络的改进的基于特征向量-掌措施(IECM)。通过两个实际网络时间全球效率得到了节点的影响的结果相比,IECM方法可以比传统ECM方法更准确地识别有影响力的节点。对于这样的事实,不同种类的测量有不同的表现,我们引入了优先顺序按要相似的理想解决方案(TOPSIS)方法来衡量整体性能的技术。特别地,当层间中的ECM方法耦合强度的ω设定为1,精度可以平均在分别用于工作区和Enrons数据集每一次层,这表明提高18.75%和29.65%,衡量层间耦合强度效力于识别有影响力的节点具有重要作用。 (c)2018年Elsevier B.V,保留所有权利。

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