Hierarchical graph-based integration network for propaganda detection in textual news articles on social media.

Hierarchical graph-based integration network for propaganda detection in textual news articles on social media.

Publication date: Jan 13, 2025

During the Covid-19 pandemic, the widespread use of social media platforms has facilitated the dissemination of information, fake news, and propaganda, serving as a vital source of self-reported symptoms related to Covid-19. Existing graph-based models, such as Graph Neural Networks (GNNs), have achieved notable success in Natural Language Processing (NLP). However, utilizing GNN-based models for propaganda detection remains challenging because of the challenges related to mining distinct word interactions and storing nonconsecutive and broad contextual data. In this study, we propose a Hierarchical Graph-based Integration Network (H-GIN) designed for detecting propaganda in text within a defined domain using multilabel classification. H-GIN is extracted to build a bi-layer graph inter-intra-channel, such as Residual-driven Enhancement and Processing (RDEP) and Attention-driven Multichannel feature Fusing (ADMF) with suitable labels at two distinct classification levels. First, RDEP procedures facilitate information interactions between distant nodes. Second, by employing these guidelines, ADMF standardizes the Tri-Channels 3-S (sequence, semantic, and syntactic) layer, enabling effective propaganda detection through related and unrelated information propagation of news representations into a classifier from the existing ProText, Qprop, and PTC datasets, thereby ensuring its availability to the public. The H-GIN model demonstrated exceptional performance, achieving an impressive 82% accuracy and surpassing current leading models. Notably, the model’s capacity to identify previously unseen examples across diverse openness scenarios at 82% accuracy using the ProText dataset was particularly significant.

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Concepts Keywords
Build COVID-19
Gin Humans
Informatics Natural Language Processing
Models Neural Networks, Computer
Pandemic SARS-CoV-2
Social Media

Semantics

Type Source Name
disease MESH Covid-19 pandemic
drug DRUGBANK Spinosad
drug DRUGBANK Saquinavir
drug DRUGBANK Coenzyme M
drug DRUGBANK Sulpiride
drug DRUGBANK Isoxaflutole
drug DRUGBANK Corticorelin
disease IDO process
disease MESH recurrence
disease IDO algorithm
drug DRUGBANK Aspartame
drug DRUGBANK Hexadecanal
drug DRUGBANK Guanosine
drug DRUGBANK (S)-Des-Me-Ampa
disease IDO object
disease MESH Allergy
disease MESH Asthma
pathway KEGG Asthma
disease MESH avian influenza
disease MESH tumor
pathway REACTOME Reproduction

Original Article

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