Analysis of COVID-19 Misinformation in Social Media using Transfer LearningDownload PDFOpen Website

2021 (modified: 31 Mar 2022)ICTAI 2021Readers: Everyone
Abstract: Most major events are often accompanied by misinformation on online Social Networking platforms. Due to its nature, the COVID-19 pandemic was bound to lead to an explosion of information online, much of it false or misleading. This information explosion, termed "infodemic" by the World Health Organization (WHO), has revealed the need for automatic fake news detection to help with the exponentially growing flow of unverified information. The objective of this study is to explore combinations of different supervised classification models trained on different general and domain-specific embeddings, and compare the effects of the iterations on the results. We also analyze the results to determine whether the differences in weighted F1-score performance metrics are statistically significant. Ultimately, we demonstrate that concatenation of general and context-specific embeddings improves performance. Our research shows promise for health misinformation detection and formulation of effective public health responses.
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