Faces Speak Louder Than Words: Emotions Versus Textual Sentiment in the 2024 USA Presidential Election
Journal:
arXiv
Published Date:
Dec 23, 2024
Abstract
Sentiment analysis of textual content has become a well-established solution
for analyzing social media data. However, with the rise of images and videos as
primary modes of expression, more information on social media is conveyed
visually. Among these, facial expressions serve as one of the most direct
indicators of emotional content in images. This study analyzes a dataset of
Instagram posts related to the 2024 U.S. presidential election, spanning April
5, 2024, to August 9, 2024, to compare the relationship between textual and
facial sentiment. Our findings reveal that facial expressions align with text
sentiment, where positive sentiment aligns with happiness, although neutral and
negative facial expressions provide critical information beyond negative
valence. Furthermore, during politically significant events such as Donald
Trump's conviction and assassination attempt, posts depicting Trump showed a
12% increase in negative sentiment. Crucially, Democrats use their opponent's
fear to depict weakness, whereas Republicans use their candidate's anger to
depict resilience. Our research highlights the potential of integrating facial
expression analysis with textual sentiment analysis to uncover deeper insights
into social media dynamics.