TY - JOUR
T1 - Misinformation spreading on correlated multiplex networks
AU - Xian, Jiajun
AU - Yang, Dan
AU - Pan, Liming
AU - Wang, Wei
AU - Wang, Zhen
N1 - Publisher Copyright:
© 2019 Author(s).
PY - 2019/11/1
Y1 - 2019/11/1
N2 - The numerous expanding online social networks offer fast channels for misinformation spreading, which could have a serious impact on socioeconomic systems. Researchers across multiple areas have paid attention to this issue with a view of addressing it. However, no systematical theoretical study has been performed to date on observing misinformation spreading on correlated multiplex networks. In this study, we propose a multiplex network-based misinformation spreading model, considering the fact that each individual can obtain misinformation from multiple platforms. Subsequently, we develop a heterogeneous edge-based compartmental theory to comprehend the spreading dynamics of our proposed model. In addition, we establish an analytical method based on stability analysis to obtain the misinformation outbreak threshold. On the basis of these theories, we finally analyze the influence of different dynamical and structural parameters on the misinformation spreading dynamics. Results show that the misinformation outbreak size R (∞) grows continuously with the effective transmission probability β once β exceeds a certain value, that is, the outbreak threshold β c. Large average degrees, strong degree heterogeneity, or positive interlayer correlation will reduce β c, accelerating the outbreak of misinformation. Besides, increasing the degree heterogeneity or a more positive interlayer correlation will enlarge (reduce) R (∞) for small (large) values of β. Our systematic theoretical analysis results agree well with the numerical simulation results. Our proposed model and accurate theoretical analysis will serve as a useful framework to understand and predict the spreading dynamics of misinformation on multiplex networks and thereby pave the way to address this serious issue.
AB - The numerous expanding online social networks offer fast channels for misinformation spreading, which could have a serious impact on socioeconomic systems. Researchers across multiple areas have paid attention to this issue with a view of addressing it. However, no systematical theoretical study has been performed to date on observing misinformation spreading on correlated multiplex networks. In this study, we propose a multiplex network-based misinformation spreading model, considering the fact that each individual can obtain misinformation from multiple platforms. Subsequently, we develop a heterogeneous edge-based compartmental theory to comprehend the spreading dynamics of our proposed model. In addition, we establish an analytical method based on stability analysis to obtain the misinformation outbreak threshold. On the basis of these theories, we finally analyze the influence of different dynamical and structural parameters on the misinformation spreading dynamics. Results show that the misinformation outbreak size R (∞) grows continuously with the effective transmission probability β once β exceeds a certain value, that is, the outbreak threshold β c. Large average degrees, strong degree heterogeneity, or positive interlayer correlation will reduce β c, accelerating the outbreak of misinformation. Besides, increasing the degree heterogeneity or a more positive interlayer correlation will enlarge (reduce) R (∞) for small (large) values of β. Our systematic theoretical analysis results agree well with the numerical simulation results. Our proposed model and accurate theoretical analysis will serve as a useful framework to understand and predict the spreading dynamics of misinformation on multiplex networks and thereby pave the way to address this serious issue.
UR - http://www.scopus.com/inward/record.url?scp=85075469495&partnerID=8YFLogxK
U2 - 10.1063/1.5121394
DO - 10.1063/1.5121394
M3 - 文章
C2 - 31779364
AN - SCOPUS:85075469495
SN - 1054-1500
VL - 29
JO - Chaos
JF - Chaos
IS - 11
M1 - 113123
ER -