Publication | Open Access
Deep Sentiment Classification and Topic Discovery on Novel Coronavirus or COVID-19 Online Discussions: NLP Using LSTM Recurrent Neural Network Approach
39
Citations
32
References
2020
Year
Unknown Venue
EngineeringMachine LearningCommunicationTopic ModelingMultimodal Sentiment AnalysisSentiment AnalysisLanguage ProcessingText MiningPublic Social MediaWord EmbeddingsNatural Language ProcessingSocial MediaDeep Sentiment ClassificationComputational LinguisticsLanguage StudiesPublic HealthBiomedical Text MiningContent AnalysisSocial Medium MiningHealth AttitudesNovel CoronavirusNlp TaskMedical Language ProcessingEpidemiologyTopic ModelSocial Medium IntelligenceGlobal HealthTopic DiscoverySocial Medium DataLinguisticsPo Tagging
Abstract Internet forums and public social media, such as online healthcare forums, provide a convenient channel for users (people/patients) concerned about health issues to discuss and share information with each other. In late December 2019, an outbreak of a novel coronavirus (infection from which results in the disease named COVID-19) was reported, and, due to the rapid spread of the virus in other parts of the world, the World Health Organization declared a state of emergency. In this paper, we used automated extraction of COVID-19–related discussions from social media and a natural language process (NLP) method based on topic modeling to uncover various issues related to COVID-19 from public opinions. Moreover, we also investigate how to use LSTM recurrent neural network for sentiment classification of COVID-19 comments. Our findings shed light on the importance of using public opinions and suitable computational techniques to understand issues surrounding COVID-19 and to guide related decision-making.
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