2022
DOI: 10.3897/jucs.84130
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Identifying Tweets with Personal Medication Intake Mentions using Attentive Character and Localized Context Representations

Abstract: Individuals with health anomalies often share their experiences on social media sites, such as Twitter, which yields an abundance of data on a global scale. Nowadays, social media data constitutes a leading source to build drug monitoring and surveillance systems. However, a proper assessment of such data requires discarding mentions which do not express drug-related personal health experiences. We automate this process by introducing a novel deep learning model. The model includes character-level and word-lev… Show more

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