Exploring Food Waste Conversations on Social Media: A Sentiment, Emotion, and Topic Analysis of Twitter Data

Eva L. Jenkins, Dickson Lukose, Linda Brennan, Annika Molenaar, Tracy A. McCaffrey

Research output: Contribution to journalArticleResearchpeer-review

3 Citations (Scopus)

Abstract

Food waste is a complex issue requiring novel approaches to understand and identify areas that could be leveraged for food waste reduction. Data science techniques such as sentiment analysis, emotion analysis, and topic modelling could be used to explore big-picture themes of food waste discussions. This paper aimed to examine food waste discussions on Twitter and identify priority areas for future food waste communication campaigns and interventions. Australian tweets containing food-waste-related search terms were extracted from the Twitter Application Programming Interface from 2019–2021 and analysed using sentiment and emotion engines. Topic modelling was conducted using Latent Dirichlet Allocation. Engagement was calculated as the sum of likes, retweets, replies, and quotes. There were 39,449 tweets collected over three years. Tweets were mostly negative in sentiment and angry in emotion. The topic model identified 13 key topics such as eating to save food waste, morals, economics, and packaging. Engagement was higher for tweets with polarising sentiments and negative emotions. Overall, our interdisciplinary analysis highlighted the negative discourse surrounding food waste discussions and identified priority areas for food waste communication. Data science techniques should be used in the future to monitor public perceptions and understand priority areas for food waste reduction.

Original languageEnglish
Article number13788
Number of pages26
JournalSustainability
Volume15
Issue number18
DOIs
Publication statusPublished - Sept 2023

Keywords

  • emotion analysis
  • food waste
  • natural language processing
  • sentiment analysis
  • social media
  • topic modelling
  • Twitter

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