BERT and similar pre-trained models perform the best for fake news detection, especially with very small dataset, and these models are significantly better option for languages with limited electronic contents, i.e., training data.
Authors
Junaed Younus Khan
1 papers
Md. Tawkat Islam Khondaker
1 papers
Sadia Afroz
1 papers
Gias Uddin
1 papers
Anindya Iqbal
2 papers
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