Machine Learning to Detect Self-Reporting of Symptoms, Testing Access, and Recovery Associated With COVID-19 on Twitter: Retrospective Big Data Infoveillance Study
Tim K. Mackey(University of California San Diego), Raphael Cuomo(San Diego State University), Bryan A. Liang(University of California San Diego), Mingxiang Cai(University of California San Diego), Cortni Bardier(University of California San Diego), Vidya Purushothaman(University of California San Diego), Neal Shah(University of California San Diego), Jiawei Li(University of California San Diego), Matthew Nali(San Diego Supercomputer Center)
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