| Literature DB >> 28852002 |
Chao Wang1, Zong Xuan Tan2, Ye Ye1, Lu Wang1, Kang Hao Cheong3, Neng-Gang Xie4.
Abstract
Rumor spreading can have a significant impact on people's lives, distorting scientific facts and influencing political opinions. With technologies that have democratized the production and reproduction of information, the rate at which misinformation can spread has increased significantly, leading many to describe contemporary times as a 'post-truth era'. Research into rumor spreading has primarily been based on either model of social and biological contagion, or upon models of opinion dynamics. Here we present a comprehensive model that is based on information entropy, which allows for the incorporation of considerations like the role of memory, conformity effects, differences in the subjective propensity to produce distortions, and variations in the degree of trust that people place in each other. Variations in the degree of trust are controlled by a confidence factor β, while the propensity to produce distortions is controlled by a conservation factor K. Simulations were performed using a Barabási-Albert (BA) scale-free network seeded with a single piece of information. The influence of β and K upon the temporal evolution of the system was subsequently analyzed regarding average information entropy, opinion fragmentation, and the range of rumor spread. These results can aid in decision-making to limit the spread of rumors.Entities:
Year: 2017 PMID: 28852002 PMCID: PMC5575068 DOI: 10.1038/s41598-017-09171-8
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Evolution of average entropy over time for different values of β and K. (The curves are obtained by averaging over 103 simulations with the same initial conditions and parameters, on the same generated network).
Figure 2Evolution chart of δ (β = −3).
Figure 4Evolution chart of δ (β = 1).
Figure 3Evolution chart of δ (β = 0).
Figure 5Evolution chart of μ (β = −3).
Figure 6Evolution chart of μ (β = 0).
Figure 7Evolution chart of μ (β = 1).
Figure 8The density distribution of the information entropy of the population (K = 1).
Figure 9Relationship between β and the information entropy of the population.