BERT-deep CNN: state of the art for sentiment analysis of COVID-19 tweets

被引:0
作者
Javad Hassannataj Joloudari
Sadiq Hussain
Mohammad Ali Nematollahi
Rouhollah Bagheri
Fatemeh Fazl
Roohallah Alizadehsani
Reza Lashgari
Ashis Talukder
机构
[1] University of Birjand,
[2] Dibrugarh University,undefined
[3] Fasa University,undefined
[4] Ferdowsi University of Mashhad,undefined
[5] Deakin University,undefined
[6] Shahid Beheshti University,undefined
[7] Australian National University,undefined
[8] Khulna University,undefined
来源
Social Network Analysis and Mining | / 13卷
关键词
COVID-19; BERT; Deep learning; Sentiment analysis; Natural language processing; Tweets;
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摘要
The COVID-19 pandemic has led to the emergence of social media platforms as crucial channels for the dissemination of information and public opinion. Comprehending the sentiment conveyed in tweets on COVID-19 is of paramount importance for individuals involved in policymaking, crisis management, and public health administration. This study seeks to conduct a comprehensive review of the current BERT and deep CNN models utilized in sentiment analysis of COVID-19 tweets. Additionally, the study aims to propose potential future research directions for the development of a BERT model that is both lightweight and high quality. The BERT model acquires contextual representations of words and effectively captures the intricate semantics of tweets related to COVID-19, whereas the deep CNN captures the hierarchical organization of the tweet embeddings. The performance of the model is exceptional, exceeding the current sentiment analysis methods for tweets related to COVID-19. Our study involves a comprehensive analysis of vast COVID-19 tweet datasets, wherein we establish the efficacy of the BERT-deep CNN models in precisely categorizing the sentiment of COVID-19 tweets in real time. The outcomes of the research offer significant perspectives on the public's attitudes, supporting decision-makers in comprehending the general viewpoint, detecting disinformation, and guiding emergency response tactics. Additionally, this study serves to enhance the progress of sentiment analysis methodologies within the realm of public health emergencies and establishes a standard for forthcoming investigations in the sentiment analysis of social media data pertaining to COVID-19.
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