Liu Bo, Xu Shuang, Li Ting, Xiao Jing, Xu Xiao-Ke
College of Information and Communication Engineering, Dalian Minzu University, Dalian 116600, China.
Guizhou Provincial Key Laboratory of Public Big Data, Guizhou University, Guiyang 550025, China.
Entropy (Basel). 2018 May 13;20(5):363. doi: 10.3390/e20050363.
In weighted networks, both link weight and topological structure are significant characteristics for link prediction. In this study, a general framework combining null models is proposed to quantify the impact of the topology, weight correlation and statistics on link prediction in weighted networks. Three null models for topology and weight distribution of weighted networks are presented. All the links of the original network can be divided into strong and weak ties. We can use null models to verify the strong effect of weak or strong ties. For two important statistics, we construct two null models to measure their impacts on link prediction. In our experiments, the proposed method is applied to seven empirical networks, which demonstrates that this model is universal and the impact of the topology and weight distribution of these networks in link prediction can be quantified by it. We find that in the , the , the , the and the , the strong ties are easier to predict, but there are a few networks whose weak edges can be predicted more easily, such as the and the . It is also found that the weak ties contribute more to link prediction in the , the and the , that is, the strong effect of weak ties exists in these networks. The framework we proposed is versatile, which is not only used to link prediction but also applicable to other directions in complex networks.
在加权网络中,链路权重和拓扑结构都是链路预测的重要特征。在本研究中,提出了一个结合空模型的通用框架,以量化拓扑、权重相关性和统计量对加权网络中链路预测的影响。提出了加权网络拓扑和权重分布的三种空模型。原始网络的所有链路可分为强连接和弱连接。我们可以使用空模型来验证弱连接或强连接的强大作用。对于两个重要的统计量,我们构建了两个空模型来衡量它们对链路预测的影响。在我们的实验中,将所提出的方法应用于七个实证网络,这表明该模型具有通用性,并且可以通过它量化这些网络的拓扑和权重分布对链路预测的影响。我们发现,在[具体网络1]、[具体网络2]、[具体网络3]、[具体网络4]和[具体网络5]中,强连接更容易预测,但有一些网络的弱边更容易预测,例如[具体网络6]和[具体网络7]。还发现,在[具体网络8]、[具体网络9]和[具体网络10]中,弱连接对链路预测的贡献更大,即这些网络中存在弱连接的强大作用。我们提出的框架具有通用性,不仅用于链路预测,还适用于复杂网络的其他方向。