Literature DB >> 35939265

A Dissemination Model Based on Psychological Theories in Complex Social Networks.

Tianyi Luo1,2, Zhidong Cao1, Daniel Zeng1, Qingpeng Zhang3.   

Abstract

Information spread on social media has been extensively studied through both model-driven theoretical research and data-driven case studies. Recent empirical studies have analyzed the differences and complexity of information dissemination, but theoretical explanations of its characteristics from a modeling perspective are underresearched. To capture the complex patterns of the information dissemination mechanism, we propose a resistant linear threshold (RLT) dissemination model based on psychological theories and empirical findings. In this article, we validate the RLT model on three types of networks and then quantify and compare the dissemination characteristics of the simulation results with those from the empirical results. In addition, we examine the factors affecting dissemination. Finally, we perform two case studies of the 2019 novel Corona Virus Disease (COVID-19)-related information dissemination. The dissemination characteristics derived by the simulations are consistent with the empirical research. These results demonstrate that the RLT model is able to capture the patterns of information dissemination on social media and thus provide model-driven insights into the interpretation of public opinion, rumor control, and marketing strategies on social media.

Entities:  

Keywords:  Complex networks; differential dissemination; dissemination mechanism; information dissemination; psychology

Year:  2021        PMID: 35939265      PMCID: PMC9328725          DOI: 10.1109/TCDS.2021.3052824

Source DB:  PubMed          Journal:  IEEE Trans Cogn Dev Syst        ISSN: 2379-8920            Impact factor:   4.546


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