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Node influence identification via resource allocation dynamics

机译:通过资源分配动态确定节点影响力

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摘要

Identifying the node influence in complex networks is an important task to optimally use the network structure and ensure the more efficient spreading in information. In this paper, by taking into account the resource allocation dynamics (RAD) and the k-shell decomposition method, we present an improved method namely RAD to generate the ranking list to evaluate the node influence. First, comparing with the epidemic process results for four real networks, the RAD method could identify the node influence more accurate than the ones generated by the topology-based measures including the degree, k-shell, closeness and the betweenness. Then, a growing scale-free network model with tunable assortative coefficient is introduced to analyze the effect of the assortative coefficient on the accuracy of the RAD method. Finally, the positive correlation is found between the RAD method and the k-shell values which display an exponential form. This work would be helpful for deeply understanding the node influence of a network.
机译:识别复杂网络中的节点影响是优化网络结构并确保更有效地传播信息的重要任务。在本文中,通过考虑资源分配动力学(RAD)和k-shell分解方法,我们提出了一种改进的方法,即RAD来生成排序列表以评估节点影响。首先,与四个真实网络的流行过程结果相比,RAD方法可以比由基于拓扑的度量(包括程度,k-shell,紧密度和中间度)生成的节点影响更准确地识别节点影响。然后,建立了一个具有可调分类系数的无标度增长网络模型,以分析分类系数对RAD方法准确性的影响。最后,在RAD方法和显示指数形式的k-shell值之间找到正相关。这项工作将有助于深入了解网络的节点影响。

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