Litcius/Paper detail

You Are What You Tweet: Analyzing Twitter for Public Health

Michael Paul, Mark Dredze

2021Proceedings of the International AAAI Conference on Web and Social Media964 citationsDOIOpen Access PDF

Abstract

Analyzing user messages in social media can measure different population characteristics, including public health measures. For example, recent work has correlated Twitter messages with influenza rates in the United States; but this has largely been the extent of mining Twitter for public health. In this work, we consider a broader range of public health applications for Twitter. We apply the recently introduced Ailment Topic Aspect Model to over one and a half million health related tweets and discover mentions of over a dozen ailments, including allergies, obesity and insomnia. We introduce extensions to incorporate prior knowledge into this model and apply it to several tasks: tracking illnesses over times (syndromic surveillance), measuring behavioral risk factors, localizing illnesses by geographic region, and analyzing symptoms and medication usage. We show quantitative correlations with public health data and qualitative evaluations of model output. Our results suggest that Twitter has broad applicability for public health research.

Topics & Concepts

Public healthSocial mediaData scienceComputer scienceTopic modelPopulationPublic health surveillanceInternet privacyPublic relationsMedicineEnvironmental healthInformation retrievalWorld Wide WebPolitical sciencePathologyData-Driven Disease SurveillanceMental Health via WritingSocial Media in Health Education