Spatiotemporal Analysis of Electronic Cigarette Perception on Twitter/X Using Natural Language Processing
Zidian Xie, Jiamu Tang, Dongmei Li

TL;DR
This study analyzes how people's views on e-cigarettes changed over time and across countries on Twitter, using AI to process millions of tweets.
Contribution
A novel spatiotemporal analysis of e-cigarette perception on social media using NLP and RoBERTa fine-tuning.
Findings
E-cigarette-related tweets increased notably in the UK and Australia during the study period.
Positive sentiment toward e-cigarettes was more common than negative, especially among users.
Negative tweets highlighted health risks and youth harm, while positive tweets framed vaping as a smoking cessation aid.
Abstract
Electronic cigarettes (e-cigarettes) have become popular in recent years, particularly among the youth and young adults. This study aims to examine the spatiotemporal patterns of online perception of e-cigarettes on Twitter/X. Through the Twitter API (Application Programming Interface), over 3 million e-cigarette-related tweets were collected from March 11, 2021, to March 14, 2023, using related keywords, such as “e-cigarette” and “vaping”. After data cleaning (such as removing duplicates and retweets) and filtering, 2,140,439 non-commercial tweets were identified. Two human coders independently hand-coded 300 randomly selected tweets regarding relevance (yes or no), sentiment (positive, negative, or neutral), and whether the Twitter user is a likely e-cigarette user (yes or no). An additional 2,000 randomly selected tweets were single-coded. The labeled 2,300 tweets were used to…
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Taxonomy
TopicsSmoking Behavior and Cessation · Data-Driven Disease Surveillance · Social Media in Health Education
