Shang Qiuyan, Zhang Bolong, Li Hanwen, Deng Yong
Institute of Fundamental and Frontier Science, University of Electronic Science and Technology of China, Chengdu 610054, China.
School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 610054, China.
Chaos. 2021 Mar;31(3):033120. doi: 10.1063/5.0033197.
Identification of influential nodes in complex networks is an area of exciting growth since it can help us to deal with various problems. Furthermore, identifying important nodes can be used across various disciplines, such as disease, sociology, biology, engineering, just to name a few. Hence, how to identify influential nodes more accurately deserves further research. Traditional identification methods usually only focus on the local or global information of the network. However, only focusing on a part of the information in the network will lead to the loss of information, resulting in inaccurate results. In order to address this problem, an identification method based on network efficiency of edge weight updating is proposed, which can effectively incorporate both global and local information of the network. Our proposed method avoids the lack of information in the network and ensures the accuracy of the results as much as possible. Moreover, by introducing the iterative idea of weight updating, some dynamic information is also introduced into our proposed method, which is more convincing. Varieties of experiments have been carried out on 11 real-world data sets to demonstrate the effectiveness and superiority of our proposed method.
识别复杂网络中的有影响力节点是一个发展迅速的领域,因为它能帮助我们处理各种问题。此外,识别重要节点可应用于多个学科,如疾病、社会学、生物学、工程学等等。因此,如何更准确地识别有影响力节点值得进一步研究。传统的识别方法通常只关注网络的局部或全局信息。然而,仅关注网络中的部分信息会导致信息丢失,从而产生不准确的结果。为了解决这个问题,提出了一种基于边权重更新网络效率的识别方法,该方法能有效地融合网络的全局和局部信息。我们提出的方法避免了网络中信息的缺失,并尽可能确保结果的准确性。此外,通过引入权重更新的迭代思想,我们提出的方法还引入了一些动态信息,这更具说服力。已在11个真实世界数据集上进行了各种实验,以证明我们提出的方法的有效性和优越性。