citation_author
Mahmoudi, Amin
citation_author
Jemielniak, Dariusz
citation_author
Ciechanowski, Leon
citation_publication_date
2025
citation_title
Characteristics of two polarized groups in online social networks’ controversial discourse
citation_pdf_url
https://repozytorium.kozminski.edu.pl/system/files/Characteristics%20of%20two%20polarized%20groups%20AUTHOR-flat_R.pdf
dcterms.title
Characteristics of two polarized groups in online social networks’ controversial discourse
dcterms.creator
Mahmoudi
dcterms.subject
social network analysis, misinformation, echo chambers, network measures
dcterms.description
In today’s interconnected world, online social networks play a pivotal role in facilitating global communication. These platforms often host discussions on contentious topics such as climate change, vaccines, and war, leading to the formation of two distinct groups: deniers and believers. Understanding the characteristics of these groups is crucial for predicting information flow and managing the diffusion of information. Moreover, such understanding can enhance machine learning algorithms designed to automatically detect these groups, thereby contributing to the development of strategies to curb the spread of disinformation, including fake news and rumors. In this study, we employ social network analysis measures to extract the characteristics of these groups, conducting experiments on three large-scale datasets of over 22 million tweets. Our findings indicate that, based on network science measures, the denier (anti) group exhibits greater coherence than the believer (pro) group.
dcterms.contributor
Mahmoudi
dcterms.date
2025
dcterms.type
Text
dcterms.format
text/html
dcterms.identifier
https://repozytorium.kozminski.edu.pl/pub/7501
dcterms.abstract
In today’s interconnected world, online social networks play a pivotal role in facilitating global communication. These platforms often host discussions on contentious topics such as climate change, vaccines, and war, leading to the formation of two distinct groups: deniers and believers. Understanding the characteristics of these groups is crucial for predicting information flow and managing the diffusion of information. Moreover, such understanding can enhance machine learning algorithms designed to automatically detect these groups, thereby contributing to the development of strategies to curb the spread of disinformation, including fake news and rumors. In this study, we employ social network analysis measures to extract the characteristics of these groups, conducting experiments on three large-scale datasets of over 22 million tweets. Our findings indicate that, based on network science measures, the denier (anti) group exhibits greater coherence than the believer (pro) group.
dcterms.language
en
dcterms.modified
2025-01-24T16:28+01:00