Guo Chungu, Yang Liangwei, Chen Xiao, Chen Duanbing, Gao Hui, Ma Jing
School of Computer Science and Engineering, University of Electricity Science and Technology of China, Chengdu 611731, China.
Information Assurance Office of Army Staff, Beijing 100043, China.
Entropy (Basel). 2020 Feb 21;22(2):242. doi: 10.3390/e22020242.
Identifying a set of influential nodes is an important topic in complex networks which plays a crucial role in many applications, such as market advertising, rumor controlling, and predicting valuable scientific publications. In regard to this, researchers have developed algorithms from simple degree methods to all kinds of sophisticated approaches. However, a more robust and practical algorithm is required for the task. In this paper, we propose the EnRenew algorithm aimed to identify a set of influential nodes via information entropy. Firstly, the information entropy of each node is calculated as initial spreading ability. Then, select the node with the largest information entropy and renovate its -length reachable nodes' spreading ability by an attenuation factor, repeat this process until specific number of influential nodes are selected. Compared with the best state-of-the-art benchmark methods, the performance of proposed algorithm improved by 21.1%, 7.0%, 30.0%, 5.0%, 2.5%, and 9.0% in final affected scale on CEnew, Email, Hamster, Router, Condmat, and Amazon network, respectively, under the Susceptible-Infected-Recovered (SIR) simulation model. The proposed algorithm measures the importance of nodes based on information entropy and selects a group of important nodes through dynamic update strategy. The impressive results on the SIR simulation model shed light on new method of node mining in complex networks for information spreading and epidemic prevention.
识别一组有影响力的节点是复杂网络中的一个重要课题,它在许多应用中起着关键作用,如市场广告、谣言控制和预测有价值的科学出版物。对此,研究人员已经开发了从简单的度方法到各种复杂方法的算法。然而,这项任务需要一种更强大、更实用的算法。在本文中,我们提出了EnRenew算法,旨在通过信息熵识别一组有影响力的节点。首先,计算每个节点的信息熵作为初始传播能力。然后,选择信息熵最大的节点,并通过衰减因子更新其长度可达节点的传播能力,重复这个过程,直到选择出特定数量的有影响力的节点。在易感-感染-恢复(SIR)模拟模型下,与最佳的现有基准方法相比,所提出算法在CEnew、Email、Hamster、Router、Condmat和Amazon网络上的最终受影响规模分别提高了21.1%、7.0%、30.0%、5.0%、2.5%和9.0%。所提出的算法基于信息熵衡量节点的重要性,并通过动态更新策略选择一组重要节点。在SIR模拟模型上取得的令人印象深刻的结果为复杂网络中用于信息传播和疫情防控的节点挖掘新方法提供了启示。