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Not cool, calm or collected: Using emotional language to detect COVID-19 misinformation

Computer Science

Not cool, calm or collected: Using emotional language to detect COVID-19 misinformation

G. Asher, P. Bohlman, et al.

COVID-19 misinformation is a major hurdle to effective pandemic management, and a team of researchers from Dartmouth College has tackled this issue head-on. Their cutting-edge model harnesses both tweet emotion and misinformation encoders to better detect false information on Twitter, revealing superior results compared to traditional methods.

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~3 min • Beginner • English
Abstract
COVID-19 misinformation on social media platforms such as twitter is a threat to effective pandemic management. Prior works on tweet COVID-19 misinformation negates the role of semantic features common to twitter such as charged emotions. Thus, we present a novel COVID-19 misinformation model, which uses both a tweet emotion encoder and COVID-19 misinformation encoder to predict whether a tweet contains COVID-19 misinformation. Our emotion encoder was fine-tuned on a novel annotated dataset and our COVID-19 misinformation encoder was fine-tuned on a subset of the COVID-HeRA dataset. Experimental results show superior results using the combination of emotion and misinformation encoders as opposed to a misinformation classifier alone. Furthermore, extensive result analysis was conducted, highlighting low quality labels and mismatched label distributions as key limitations to our study.
Publisher
Not specified in provided text
Published On
Feb 01, 2023
Authors
Gabriel Asher, Phil Bohlman, Karsten Kleyensteuber
Tags
COVID-19
misinformation
social media
Twitter
emotion detection
pandemic management
classification model
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