Machine Learning-Based Identifications of COVID-19 Fake News Using Biomedical Information Extraction

Author:

Fifita Faizi1,Smith Jordan2,Hanzsek-Brill Melissa B.2,Li Xiaoyin2,Zhou Mengshi2

Affiliation:

1. Department of Computer Science and Information Technology, St Cloud State University, 720 4th Ave South, St Cloud, MN 56301, USA

2. Department of Mathematics and Statistics, St Cloud State University, 720 4th Ave South, St Cloud, MN 56301, USA

Abstract

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.

Funder

National Science Foundation

St. Cloud State University

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Information Systems,Management Information Systems

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