Topic Modelling and Sentiment Analysis for Twitter Freedom Convoy 2022 in Canada: An Observational Study (Preprint)

Author:

Tsao Shu-FengORCID,Huang Shih-HsioORCID,Bin Noon Gaya,Li Lianghua,Yang Yang,Chen HelenORCID,Butt Zahid A.ORCID

Abstract

BACKGROUND

Truck drivers gathered at Ottawa, Canada for “Freedom Convoy” to protest the COVID-19 vaccine mandate that went into effect on in mid-January 2022. The convoy has led to controversies and debates on social media, especially on Twitter.

OBJECTIVE

This study aimed to investigate public discourses and sentiments regarding the Freedom Convoy on Twitter.

METHODS

English tweets were retrieved from Twitter API from January 15 to February 14, 2022 when the Freedom Convoy occurred. Unsupervised topic modelling and sentiment analysis were applied to identify topics and sentiments for each topic.

RESULTS

Five topics has resulted from the topic modelling, including protest rally, support extremes, general convoy support, government, and police. Overall, sentiments for each topic have begun with more positive or negative sentiments but approached to neutral over time.

CONCLUSIONS

The results have shown that sentiments towards the Freedom Convoy generally tended to be positive. Five topics were identified from the data collected, and these topics highly correlated with the events of the convoy. Our study also demonstrated that a mixed approach of unsupervised machine learning techniques and manual validation could generate timely evidence.

Publisher

JMIR Publications Inc.

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