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논문검색

Detecting Fake News about COVID-19 Infodemic Using Deep Learning and Content Analysis

원문정보

초록

영어

With the widespread use of social media, online social platforms like Twitter have become a place of rapid dissemination of information―both accurate and inaccurate. After the COVID-19 outbreak, the overabundance of fake information and rumours on online social platforms about the COVID-19 pandemic has spread over society as quickly as the virus itself. As a result, fake news poses a significant threat to effective virus response by negatively affecting people’s willingness to follow the proper public health guidelines and protocols, which makes it important to identify fake information from online platforms for the public interest. In this research, we introduce an approach to detect fake news using deep learning techniques, which outperform traditional machine learning techniques with a 93.1% accuracy. We then investigate the content differences between real and fake news by applying topic modeling and linguistic analysis. Our results show that topics on Politics and Government services are most common in fake news. In addition, we found that fake news has lower analytic and authenticity scores than real news. With the findings, we discuss important academic and practical implications of the study.

목차

ABSTRACT
Ⅰ. Introduction
Ⅱ. Literature Review
2.1. Fake News and the COVID-19 Infodemic
2.2. Fake News Detection Using Deep Learning
2.3. Content Analysis for Fake News
Ⅲ. Research Framework
3.1. Phase 1: Fake News Detection Model
3.2. Phase 2: Content analysis of news
Ⅳ. Analysis and Result
4.1. Results of Prediction Model
4.2. Results of Topic Modeling
4.3. Results of Linguistic Analysis
Ⅴ. Discussion and Conclusion
Acknowledgements

저자정보

  • Olga Chernyaeva Ph.D. Student, College of Business Administration, Pusan National University, Korea
  • Taeho Hong Professor, College of Business Administration, Pusan National University, Korea
  • YongHee Kim Associate Professor, College of Business Administration, Pusan National University, Korea
  • YoungKi Park Associate Professor, School of Business, George Washington University, USA
  • Gang Ren Assistant Professor, School of Business, Hefei University of Technology, China
  • Jisoo Ock Assistant Professor, College of Business Administration, Pusan National University, Korea

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