A majority-based learning system for detecting misinformation
Document Type
Article
Publication Date
1-1-2024
Publication Title
Behaviour and Information Technology
Abstract
Combating misinformation is both a multifaceted problem and a pressing societal concern. In response, we propose a user-centric system founded on the majority vote model, offering flexibility and synergy in integrating established machine-learning methods or classifiers such as SVM, MLP, LSTM, RF, and XGB. Computational experiments demonstrate promising results in implementing our proposed system to identify text-based fake news, advertorials, and plagiarised information in social media. The dataset employed in these experiments is primarily sourced from volunteer contributors and fact-checking websites. The result evaluation indicators encompass balanced accuracy and F1 score. Overall, this study introduces a significant and autonomous countermeasure to address misinformation.
DOI
10.1080/0144929X.2024.2326562
Recommended Citation
Kao, Hanchun; Tu, Yu Ju; Huang, Yu Hsiang; and Strader, Troy, "A majority-based learning system for detecting misinformation" (2024). Faculty and Staff Works. 1070.
https://kb.gcsu.edu/fac-staff/1070