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Influence spreading model used to analyse social networks and detect sub-communities

机译:影响力传播模型用于分析社交网络和发现子社区

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摘要

A dynamic influence spreading model is presented for computing network centrality and betweenness measures. Network topology, and possible directed connections and unequal weights of nodes and links, are essential features of the model. The same influence spreading model is used for community detection in social networks and for analysis of network structures. Weaker connections give rise to more sub-communities whereas stronger ties increase the cohesion of a community. The validity of the method is demonstrated with different social networks. Our model takes into account different paths between nodes in the network structure. The dependency of different paths having common links at the beginning of their paths makes the model more realistic compared to classical structural, simulation and random walk models. The influence of all nodes in a network has not been satisfactorily understood. Existing models may underestimate the spreading power of interconnected peripheral nodes as initiators of dynamic processes in social, biological and technical networks.
机译:提出了一种动态影响力扩散模型,用于计算网络的中心度和中间度。网络拓扑,可能的定向连接以及节点和链接的权重不相等是该模型的基本特征。相同的影响力传播模型用于社交网络中的社区检测和网络结构分析。较弱的联系会导致更多的子社区,而更牢固的联系会增加社区的凝聚力。通过不同的社交网络证明了该方法的有效性。我们的模型考虑了网络结构中节点之间的不同路径。与经典结构,模拟和随机游走模型相比,不同路径在路径开始时具有公共链接的依赖性使模型更加逼真。尚未令人满意地理解网络中所有节点的影响。现有模型可能低估了互连外围节点作为社会,生物和技术网络中动态过程的发起者的传播能力。

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