Divergent Emotional Patterns in Disinformation on Social Media? An Analysis of Tweets and TikToks about the DANA in Valencia
Journal:
arXiv
Published Date:
Jan 28, 2025
Abstract
This study investigates the dissemination of disinformation on social media
platforms during the DANA event (DANA is a Spanish acronym for Depresion
Aislada en Niveles Altos, translating to high-altitude isolated depression)
that resulted in extremely heavy rainfall and devastating floods in Valencia,
Spain, on October 29, 2024. We created a novel dataset of 650 TikTok and X
posts, which was manually annotated to differentiate between disinformation and
trustworthy content. Additionally, a Few-Shot annotation approach with GPT-4o
achieved substantial agreement (Cohen's kappa of 0.684) with manual labels.
Emotion analysis revealed that disinformation on X is mainly associated with
increased sadness and fear, while on TikTok, it correlates with higher levels
of anger and disgust. Linguistic analysis using the LIWC dictionary showed that
trustworthy content utilizes more articulate and factual language, whereas
disinformation employs negations, perceptual words, and personal anecdotes to
appear credible. Audio analysis of TikTok posts highlighted distinct patterns:
trustworthy audios featured brighter tones and robotic or monotone narration,
promoting clarity and credibility, while disinformation audios leveraged tonal
variation, emotional depth, and manipulative musical elements to amplify
engagement. In detection models, SVM+TF-IDF achieved the highest F1-Score,
excelling with limited data. Incorporating audio features into
roberta-large-bne improved both Accuracy and F1-Score, surpassing its text-only
counterpart and SVM in Accuracy. GPT-4o Few-Shot also performed well,
showcasing the potential of large language models for automated disinformation
detection. These findings demonstrate the importance of leveraging both textual
and audio features for improved disinformation detection on multimodal
platforms like TikTok.