Modeling online social signed networks

作者:Li, Le; Gu, Ke; Zeng, An*; Fan, Ying*; Di, Zengru
来源:Physica A: Statistical Mechanics and Its Applications , 2018, 495: 345-352.
DOI:10.1016/j.physa.2017.12.089

摘要

People's online rating behavior can be modeled by user-object bipartite networks directly. However, few works have been devoted to reveal the hidden relations between users, especially from the perspective of signed networks. We analyze the signed monopartite networks projected by the signed user-object bipartite networks, finding that the networks are highly clustered with obvious community structure. Interestingly, the positive clustering coefficient is remarkably higher than the negative clustering coefficient. Then, a Signed Growing Network model (SGN) based on local preferential attachment is proposed to generate a user's signed network that has community structure and high positive clustering coefficient. Other structural properties of the modeled networks are also found to be similar to the empirical networks.