logo
ResearchBunny Logo
A classification and recognition algorithm of key figures in public opinion integrating multidimensional similarity and K-shell based on supernetwork

Interdisciplinary Studies

A classification and recognition algorithm of key figures in public opinion integrating multidimensional similarity and K-shell based on supernetwork

G. Wang, Y. Wang, et al.

Discover an innovative classification algorithm for identifying key figures in online public opinion, developed by Guanghui Wang, Yushan Wang, Kaidi Liu, and Shu Sun. This research showcases how integrating multidimensional similarities and K-shell analysis within a four-dimensional communication framework outperforms traditional methods, providing valuable insights through a case study of the China Eastern Airlines incident.

00:00
00:00
~3 min • Beginner • English
Abstract
In online public opinion events, key figures are crucial to the formation and diffusion of public opinion, to the evolution and dissemination of topics, and to the guidance and transformation of the direction of public opinion. Based on the four-dimensional public opinion communication supernetwork (social-psychology-opinion-convergent), this study proposes a classification and recognition algorithm of key figures in online public opinion that integrates multidimensional similarity and K-shell to identify the key figures with differentiation in online public opinion events. The research finds that the evolutionary process of public opinion events is the joint action of key figures with different roles. The opinion leader is the key figure in the global communication of public opinion. The focus figure is the core figure that promotes the dissemination of public opinion on local subnetworks. The communication figure is the "bridge" node in the cross-regional communication of public opinion. Through the algorithm verification of the case "China Eastern Airlines Passenger Plane Crash Event", we find that the algorithm proposed in this paper has advantages in feasibility, sensitivity, and effectiveness, compared with traditional algorithms such as Cl, forwarding volume, degree centrality, K-shell, and multidimensional similarity. The classification and recognition algorithm proposed in this study can not only identify multirole key figures simultaneously but also improve the recognition granularity and eliminate the interference of core-like nodes.
Publisher
Humanities and Social Sciences Communications
Published On
Feb 13, 2024
Authors
Guanghui Wang, Yushan Wang, Kaidi Liu, Shu Sun
Tags
online public opinion
classification algorithm
key figures
K-shell
opinion leaders
communication supernetwork
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny