The understanding of how users in a network update their opinions based on their neighbours opinions has attracted a great deal of interest in the field of network science, and a growing body of literature recognises the significance of this issue. In this research paper, we propose a new dynamic model of opinion formation in directed networks. In this model, the opinion of each node is updated as the weighted average of its neighbours opinions, where the weights represent social influence. We define a new centrality measure as a social influence metric based on both influence and conformity. We measure this new approach using two opinion formation models: (i) the Degroot model and (ii) our own proposed model. Previously published research studies have not considered conformity, and have only considered the influence of the nodes when computing the social influence. In our definition, nodes with low in-degree and high out-degree that were connected to nodes with high out-degree and low in-degree had higher centrality. As the main contribution of this research, we propose an algorithm for finding a small subset of nodes in a social network that can have a significant impact on the opinions of other nodes. Experiments on real-world data demonstrate that the proposed algorithm significantly outperforms previously published state-of-the-art methods.
翻译:了解网络用户如何根据邻居的意见更新其观点,这在网络科学领域引起了极大的兴趣,越来越多的文献认识到这一问题的重要性。在本研究论文中,我们提出了在定向网络中形成观点的新动态模式。在这个模型中,每个节点的意见都更新为邻国意见的加权平均数,其加权数代表社会影响。我们根据影响和一致性,将一个新的中心度衡量标准定义为一种社会影响衡量标准。我们用两种观点形成模型衡量这一新方法:(一) Degroot模式和(二) 我们自己的拟议模式。以前发表的研究研究没有考虑一致性,在计算社会影响时只考虑了节点的影响。在我们的定义中,与高度和低度节点相联系的低度和高度节点具有较高的中心度。作为这项研究的主要贡献,我们建议用一种算法在社会网络中找到一个小的节点子子子,这种节点对其他节点的意见产生显著影响。对现实世界数据进行实验,其前期数据显示,拟议的算法大大超越了以前公布的状态。