Transfer Learning of Pre-trained Transformers for Covid-19 Hoax Detection in Indonesian Language

Nowadays, internet has become the most popular source of news. However, the validity of the online news articles is difficult to assess, whether it is a fact or a hoax. Hoaxes related to Covid-19 brought a problematic effect to human life. An accurate hoax detection system is important to filter abu...

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Veröffentlicht in:IJCCS (Indonesian Journal of Computing and Cybernetics Systems) 2021-07, Vol.15 (3), p.317-326
Hauptverfasser: Suadaa, Lya Hulliyyatus, Santoso, Ibnu, Panjaitan, Amanda Tabitha Bulan
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Sprache:eng
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Zusammenfassung:Nowadays, internet has become the most popular source of news. However, the validity of the online news articles is difficult to assess, whether it is a fact or a hoax. Hoaxes related to Covid-19 brought a problematic effect to human life. An accurate hoax detection system is important to filter abundant information on the internet.  In this research, a Covid-19 hoax detection system was proposed by transfer learning of pre-trained transformer models. Fine-tuned original pre-trained BERT, multilingual pre-trained mBERT, and monolingual pre-trained IndoBERT were used to solve the classification task in the hoax detection system. Based on the experimental results, fine-tuned IndoBERT models trained on monolingual Indonesian corpus outperform fine-tuned original and multilingual BERT with uncased versions. However, the fine-tuned mBERT cased model trained on a larger corpus achieved the best performance.
ISSN:1978-1520
2460-7258
DOI:10.22146/ijccs.66205