Big Data, Natural Language Processing, and Deep Learning to Detect and Characterize Illicit COVID-19 Product Sales: Infoveillance Study on Twitter and Instagram
BackgroundThe coronavirus disease (COVID-19) pandemic is perhaps the greatest global health challenge of the last century. Accompanying this pandemic is a parallel "infodemic," including the online marketing and sale of unapproved, illegal, and counterfeit COVID-19 health products includin...
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Main Authors: | Mackey, Tim Ken (Author), Li, Jiawei (Author), Purushothaman, Vidya (Author), Nali, Matthew (Author), Shah, Neal (Author), Bardier, Cortni (Author), Cai, Mingxiang (Author), Liang, Bryan (Author) |
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Format: | Book |
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JMIR Publications,
2020-08-01T00:00:00Z.
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