Implementation of the BERT-derived architectures to tackle disinformation challenges

Neural Comput Appl. 2022;34(23):20449-20461. doi: 10.1007/s00521-021-06276-0. Epub 2021 Jul 22.

Abstract

Recent progress in the area of modern technologies confirms that information is not only a commodity but can also become a tool for competition and rivalry among governments and corporations, or can be applied by ill-willed people to use it in their hate speech practices. The impact of information is overpowering and can lead to many socially undesirable phenomena, such as panic or political instability. To eliminate the threats of fake news publishing, modern computer security systems need flexible and intelligent tools. The design of models meeting the above-mentioned criteria is enabled by artificial intelligence and, above all, by the state-of-the-art neural network architectures, applied in NLP tasks. The BERT neural network belongs to this type of architectures. This paper presents Transformer-based hybrid architectures applied to create models for detecting fake news.

Keywords: Fake news detection; Machine Learning; Natural Language Processing; Neural networks; Security.