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Studying node centrality based on the hidden hyperbolic metric space of complex networks

机译:基于复杂网络隐藏双曲度量空间的节点中心性

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With the hyperbolic model of the hidden metric space of networks, the hyperbolic DC of a node is defined, totally based on node features in the hyperbolic space but not directly related to network structures. The effectiveness of the hyperbolic DC in forecasting the true importance ranking of nodes in the network structure is studied. Simulations on the forecasting accuracy show it has a certain effectiveness in forecasting a few of the most important nodes, which provides possibility to carry out targeted attacks on networks without knowing any information of network structures. Moreover, for random attacks, a mechanism based on the hyperbolic DC is designed to enhance the destructive power, and the macro-matching degree is proposed to measure the effectiveness of the mechanism. Simulations show when parameter beta is not big, the mechanism has quite good performance, and the smaller the value of beta, the more effective the mechanism. Furthermore, for parameters in the hyperbolic model, their influences on the mechanism are researched. Results show temperature has more obvious influences than curvature, and the mechanism is found to become more effective when temperature becomes lower. According to the relationship between temperature and the clustering feature of the network, the research indicates our mechanism for random attacks should be effective for most real-world networks. (C) 2018 Elsevier B.V. All rights reserved.
机译:通过网络的隐藏度量空间的双曲模型,节点的双曲线DC定义,基于双曲线空间中的节点特征,但与网络结构无直接相关。研究了双曲线DC在预测网络结构中节点的真实重要性排名中的有效性。预测精度的模拟表明,在预测最重要的节点中具有一定的有效性,这提供了在不知道网络结构的任何信息的情况下对网络进行目标攻击的可能性。此外,对于随机攻击,设计基于双曲线DC的机制来增强破坏性功率,并且提出了宏匹配程度来测量机制的有效性。模拟显示当参数β不大时,机制具有相当良好的性能,较少的β的值越小,机制越有效。此外,对于双曲模型中的参数,研究了对机制的影响。结果显示温度比曲率更为明显,并且当温度变低时,发现该机制变得更有效。根据网络的温度与网络聚类特征的关系,研究表明我们对大多数现实网络的随机攻击机制应该是有效的。 (c)2018年elestvier b.v.保留所有权利。

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