An information dissemination strategy in social networks based on graph and content analysis

Social networking platforms like Facebook, Twitter, Instagram, and LinkedIn have revolutionized communication, but there’s growing concern about invalid information, misinformation, and disinformation. Malicious actors exploit these platforms for economic, political, or ideological purposes, impacti...

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Main Author: Jing Huang
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Egyptian Informatics Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1110866524001269
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author Jing Huang
author_facet Jing Huang
author_sort Jing Huang
collection DOAJ
description Social networking platforms like Facebook, Twitter, Instagram, and LinkedIn have revolutionized communication, but there’s growing concern about invalid information, misinformation, and disinformation. Malicious actors exploit these platforms for economic, political, or ideological purposes, impacting public trust, democratic processes, and individual decision-making. Research is being conducted to develop tools to distinguish genuine and invalid information. Twitter, with its vast user base, has become a focal point for studying information diffusion patterns and identifying potential sources of misinformation. A novel method is proposed for identifying information dissemination paths based on node centrality criteria, analyzing the network structure and characteristics of Twitter users to uncover influential nodes that play a crucial role in spreading information across the network. The study explores the potential of deep learning and ensemble learning techniques in content development to improve the accuracy of information classification. Examining the performance of the proposed hybrid model in classifying misinformation showed that in terms of average accuracy, f-measure, and AUC, it achieved 98.6 %, 0.9858, and 0.9862 respectively, which are at least 1.6 %, 1.62 % and 1.5 % higher than the compared method. Additionally, the proposed model could recognize the leader nodes in information dissemination by the highest accuracy of 86% which is competitive with the metaheuristic-based approaches such as FFO and GWO. By leveraging advanced computational techniques and data analysis, we can strive towards a more informed and trustworthy digital environment, where users can navigate through the sea of information with confidence and make well-informed decisions.
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spelling doaj-art-cf8eeff8fa1c4fe5857f1ac9eba51b802024-12-22T05:27:33ZengElsevierEgyptian Informatics Journal1110-86652025-03-0129100563An information dissemination strategy in social networks based on graph and content analysisJing Huang0Digital Arts Academy, Shanghai University, Baoshan 200444, Shanghai, ChinaSocial networking platforms like Facebook, Twitter, Instagram, and LinkedIn have revolutionized communication, but there’s growing concern about invalid information, misinformation, and disinformation. Malicious actors exploit these platforms for economic, political, or ideological purposes, impacting public trust, democratic processes, and individual decision-making. Research is being conducted to develop tools to distinguish genuine and invalid information. Twitter, with its vast user base, has become a focal point for studying information diffusion patterns and identifying potential sources of misinformation. A novel method is proposed for identifying information dissemination paths based on node centrality criteria, analyzing the network structure and characteristics of Twitter users to uncover influential nodes that play a crucial role in spreading information across the network. The study explores the potential of deep learning and ensemble learning techniques in content development to improve the accuracy of information classification. Examining the performance of the proposed hybrid model in classifying misinformation showed that in terms of average accuracy, f-measure, and AUC, it achieved 98.6 %, 0.9858, and 0.9862 respectively, which are at least 1.6 %, 1.62 % and 1.5 % higher than the compared method. Additionally, the proposed model could recognize the leader nodes in information dissemination by the highest accuracy of 86% which is competitive with the metaheuristic-based approaches such as FFO and GWO. By leveraging advanced computational techniques and data analysis, we can strive towards a more informed and trustworthy digital environment, where users can navigate through the sea of information with confidence and make well-informed decisions.http://www.sciencedirect.com/science/article/pii/S1110866524001269Ensemble learningDeep learningInformation disseminationSocial networks
spellingShingle Jing Huang
An information dissemination strategy in social networks based on graph and content analysis
Egyptian Informatics Journal
Ensemble learning
Deep learning
Information dissemination
Social networks
title An information dissemination strategy in social networks based on graph and content analysis
title_full An information dissemination strategy in social networks based on graph and content analysis
title_fullStr An information dissemination strategy in social networks based on graph and content analysis
title_full_unstemmed An information dissemination strategy in social networks based on graph and content analysis
title_short An information dissemination strategy in social networks based on graph and content analysis
title_sort information dissemination strategy in social networks based on graph and content analysis
topic Ensemble learning
Deep learning
Information dissemination
Social networks
url http://www.sciencedirect.com/science/article/pii/S1110866524001269
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