1. Novel fuzzy deep learning approach for automated detection of useful COVID-19 tweets.
- Author
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Malla, SreeJagadeesh, Kumar, Lella Kranthi, and Alphonse, P.J.A.
- Subjects
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MACHINE learning , *DEEP learning , *SOCIAL media , *TRANSFORMER models , *COVID-19 - Abstract
Coronavirus (COVID-19) is a newly discovered viral disease from the SARS-CoV-2 family. This has caused a moral panic resulting in the spread of informative and uninformative information about COVID-19 and its effects. Twitter is a popular social media platform used extensively during the current outbreak. This paper aims to predict informative tweets related to COVID-19 on Twitter using a novel set of fuzzy rules involving deep learning techniques. This study focuses on identifying informative tweets during the pandemic to provide the public with trustworthy information and forecast how quickly diseases could spread. In this case, we have implemented RoBERTa and CT-BERT models using the fuzzy methodology to identify COVID-19 patient tweets. The proposed architecture combines deep learning transformer models RoBERTa and CT-BERT with the fuzzy technique to categorize posts as INFORMATIVE or UNINFORMATIVE. We performed a comparative analysis of our method with machine learning models and deep learning approaches. The results show that our proposed model can classify informative and uninformative tweets with an accuracy of 91.40% and an F1-score of 91.94% using the COVID-19 English tweet dataset. The proposed model is accurate and ready for real-world application. • The article presents a fuzzy ensemble deep learning model. • The combination of pre-trained transformers RoBERTa, and CT-BERT, were used. • The latest COVID-19 dataset was classified using the proposed model. • The model has shown 91.40 percent accuracy and 91.94 percent F1-score. • The proposed model can be helpful in real-time applications. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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