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Free, publicly-accessible full text available December 1, 2025
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Wei, Chao-Chun; Li, Xiaoyin; Hatt, Sabrina; Huai, Xudong; Liu, Jue; Singh, Birender; Kim, Kyung-Mo; Fernandes, Rafael_M; Cardon, Paul; Zhao, Liuyan; et al (, Physical Review Materials)
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Li, Xiaoyin; Zhang, Shunhong; Zhang, Xiaoming; Vardeny, Zeev Valy; Liu, Feng (, Nano Letters)
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Machine Learning-Based Identifications of COVID-19 Fake News Using Biomedical Information ExtractionFifita, Faizi; Smith, Jordan; Hanzsek-Brill, Melissa B.; Li, Xiaoyin; Zhou, Mengshi (, Big Data and Cognitive Computing)The spread of fake news related to COVID-19 is an infodemic that leads to a public health crisis. Therefore, detecting fake news is crucial for an effective management of the COVID-19 pandemic response. Studies have shown that machine learning models can detect COVID-19 fake news based on the content of news articles. However, the use of biomedical information, which is often featured in COVID-19 news, has not been explored in the development of these models. We present a novel approach for predicting COVID-19 fake news by leveraging biomedical information extraction (BioIE) in combination with machine learning models. We analyzed 1164 COVID-19 news articles and used advanced BioIE algorithms to extract 158 novel features. These features were then used to train 15 machine learning classifiers to predict COVID-19 fake news. Among the 15 classifiers, the random forest model achieved the best performance with an area under the ROC curve (AUC) of 0.882, which is 12.36% to 31.05% higher compared to models trained on traditional features. Furthermore, incorporating BioIE-based features improved the performance of a state-of-the-art multi-modality model (AUC 0.914 vs. 0.887). Our study suggests that incorporating biomedical information into fake news detection models improves their performance, and thus could be a valuable tool in the fight against the COVID-19 infodemic.more » « less
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