To Vaccinate or not to Vaccinate? Analyzing $\mathbb{X}$ Power over the Pandemic
Journal:
arXiv
Published Date:
Mar 4, 2025
Abstract
The COVID-19 pandemic has profoundly affected the normal course of life --
from lock-downs and virtual meetings to the unprecedentedly swift creation of
vaccines. To halt the COVID-19 pandemic, the world has started preparing for
the global vaccine roll-out. In an effort to navigate the immense volume of
information about COVID-19, the public has turned to social networks. Among
them, $\mathbb{X}$ (formerly Twitter) has played a key role in distributing
related information. Most people are not trained to interpret medical research
and remain skeptical about the efficacy of new vaccines. Measuring their
reactions and perceptions is gaining significance in the fight against
COVID-19. To assess the public perception regarding the COVID-19 vaccine, our
work applies a sentiment analysis approach, using natural language processing
of $\mathbb{X}$ data. We show how to use textual analytics and textual data
visualization to discover early insights (for example, by analyzing the most
frequently used keywords and hashtags). Furthermore, we look at how people's
sentiments vary across the countries. Our results indicate that although the
overall reaction to the vaccine is positive, there are also negative sentiments
associated with the tweets, especially when examined at the country level.
Additionally, from the extracted tweets, we manually labeled 100 tweets as
positive and 100 tweets as negative and trained various One-Class Classifiers
(OCCs). The experimental results indicate that the S-SVDD classifiers
outperform other OCCs.