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Assessing Electronic Cigarette-Related Tweets for Sentiment and Content Using Supervised Machine Learning.

Heather Cole-LewisArun VargheseAmy SandersMary SchwarzJillian PugatchErik Augustson
Published in: Journal of medical Internet research (2015)
Social media outlets like Twitter can uncover real-time snapshots of personal sentiment, knowledge, attitudes, and behavior that are not as accessible, at this scale, through any other offline platform. Using the vast data available through social media presents an opportunity for social science and public health methodologies to utilize computational methodologies to enhance and extend research and practice. This study was successful in automating a complex five-category manual content analysis of e-cigarette-related content on Twitter using machine learning techniques. The study details machine learning model specifications that provided the best accuracy for data related to e-cigarettes, as well as a replicable methodology to allow extension of these methods to additional topics.
Keyphrases
  • single cell
  • social media
  • machine learning
  • public health
  • health information
  • healthcare
  • big data
  • smoking cessation
  • mental health
  • artificial intelligence
  • primary care
  • deep learning
  • replacement therapy