The rapid advancement of social networks and the convenience of internet availability have accelerated the rampant spread of false news and rumors on social media sites. Amid the COVID 19 epidemic, this misleading information has aggravated the situation by putting peoples mental and physical lives in danger. To limit the spread of such inaccuracies, identifying the fake news from online platforms could be the first and foremost step. In this research, the authors have conducted a comparative analysis by implementing five transformer based models such as BERT, BERT without LSTM, ALBERT, RoBERTa, and a Hybrid of BERT & ALBERT in order to detect the fraudulent news of COVID 19 from the internet. COVID 19 Fake News Dataset has been used for training and testing the models. Among all these models, the RoBERTa model has performed better than other models by obtaining an F1 score of 0.98 in both real and fake classes.
翻译:在COVID 19流行病中,这种误导性信息使人们的身心生命处于危险之中,从而加剧了这种状况。为了限制这种不准确现象的传播,从在线平台上识别假消息可能是第一步,在这一研究中,作者进行了比较分析,采用了五个基于变压器的模型,如BERT、没有LSTM的BERT、ALBERT、RoBERTA和BERT & ALBERT的混合体,以便从互联网上探测COVID 19的假消息。 COVID 19 Fake新闻数据集被用于培训和测试模型。在所有这些模型中,RoBERTA模型的表现优于其他模型,在真实和假类中都获得了0.98的F1分。