Fake news has already become a severe problem on social media, with substantially more detrimental impacts on society than previously thought. Research on multi-modal fake news detection has substantial practical significance since online fake news that includes multimedia elements are more likely to mislead users and propagate widely than text-only fake news. However, the existing multi-modal fake news detection methods have the following problems: 1) Existing methods usually use traditional CNN models and their variants to extract image features, which cannot fully extract high-quality visual features. 2) Existing approaches usually adopt a simple concatenate approach to fuse inter-modal features, leading to unsatisfactory detection results. 3) Most fake news has large disparity in feature similarity between images and texts, yet existing models do not fully utilize this aspect. Thus, we propose a novel model (TGA) based on transformers and multi-modal fusion to address the above problems. Specifically, we extract text and image features by different transformers and fuse features by attention mechanisms. In addition, we utilize the degree of feature similarity between texts and images in the classifier to improve the performance of TGA. Experimental results on the public datasets show the effectiveness of TGA*. * Our code is available at https://github.com/PPEXCEPED/TGA.
Download full-text PDF |
Source |
---|---|
http://dx.doi.org/10.3934/mbe.2023657 | DOI Listing |
JMIR Infodemiology
January 2025
Computational Social Science DataLab, University Institute of Research for Sustainable Social Development (INDESS), University of Cadiz, Jerez de la Frontera, Spain.
Background: During the COVID-19 pandemic, social media platforms have been a venue for the exchange of messages, including those related to fake news. There are also accounts programmed to disseminate and amplify specific messages, which can affect individual decision-making and present new challenges for public health.
Objective: This study aimed to analyze how social bots use hashtags compared to human users on topics related to misinformation during the outbreak of the COVID-19 pandemic.
Health Info Libr J
January 2025
Department of Management Information Systems, King Abdulaziz University, Jeddah, Saudi Arabia.
Background: Much government response to improving vaccination uptake during the COVID-19 pandemic has focused on the problems of misinformation and disinformation. There may, however, be other signals within online health information that influence uptake of vaccination.
Objective: This study identified the influence of various health information signals within online information communities on the intention of receiving the vaccine.
Sci Rep
January 2025
Department of Obstetrics and Gynaecology, Alex Ekwueme Federal University Teaching Hospital, Abakaliki, Ebonyi State, Nigeria.
Misinformation, under-information, and disinformation regarding HIV among adolescents may be associated with a high prevalence of HIV among adolescents and young adults. The source of the HIV-related knowledge determines the accuracy and comprehensiveness of the information received. This study aimed to assess the adequacy (accuracy and comprehensive) of HIV-related knowledge and its determinants among senior school students in Abakaliki.
View Article and Find Full Text PDFClin Case Rep
January 2025
Craig R Dufresne Fairfax Virginia USA.
Freeman-Burian syndrome is a rare craniofacial syndrome surrounded by fake news. This situation shows the strong connection between the quality of a literature search and clinical reasoning displayed in patient care, especially in care of patients with rare conditions.
View Article and Find Full Text PDFEnter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!