Examining the Mental Health Impact of Misinformation on Social Media Using a Hybrid Transformer-Based Approach
- URL: http://arxiv.org/abs/2503.02333v1
- Date: Tue, 04 Mar 2025 06:45:17 GMT
- Title: Examining the Mental Health Impact of Misinformation on Social Media Using a Hybrid Transformer-Based Approach
- Authors: Sarvesh Arora, Sarthak Arora, Deepika Kumar, Vallari Agrawal, Vedika Gupta, Dipit Vasdev,
- Abstract summary: The unchecked spread of false narratives has profound effects on mental health, contributing to increased stress, anxiety, and misinformation-driven paranoia.<n>This study presents a hybrid transformer-based approach using a RoBERTa-LSTM classifier to detect misinformation, assess its impact on mental health, and classify disorders linked to misinformation exposure.<n>The proposed models demonstrate accuracy rates of 98.4, 87.8, and 77.3 in detecting misinformation, mental health implications, and disorder classification, respectively.
- Score: 0.9746984889116503
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Social media has significantly reshaped interpersonal communication, fostering connectivity while also enabling the proliferation of misinformation. The unchecked spread of false narratives has profound effects on mental health, contributing to increased stress, anxiety, and misinformation-driven paranoia. This study presents a hybrid transformer-based approach using a RoBERTa-LSTM classifier to detect misinformation, assess its impact on mental health, and classify disorders linked to misinformation exposure. The proposed models demonstrate accuracy rates of 98.4, 87.8, and 77.3 in detecting misinformation, mental health implications, and disorder classification, respectively. Furthermore, Pearson's Chi-Squared Test for Independence (p-value = 0.003871) validates the direct correlation between misinformation and deteriorating mental well-being. This study underscores the urgent need for better misinformation management strategies to mitigate its psychological repercussions. Future research could explore broader datasets incorporating linguistic, demographic, and cultural variables to deepen the understanding of misinformation-induced mental health distress.
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