Invited paper
Outlier knowledge management for extreme public health events: Understanding public opinions about COVID-19 based on microblog data

https://doi.org/10.1016/j.seps.2020.100941Get rights and content

Highlights

Develop an outlier knowledge management framework for dealing with extreme public health events.

Conduct data mining and feature extraction on the microblogs from Wuhan and nearby areas.

Analyze the semantic and sentiment vocabulary, the sentiment curve, and the portraits of patients.

Acquire outlier knowledge of COVID-19 and incorporate it into the outlier knowledge base.

Abstract

Based on complex adaptive system theory and information theory for investigating heterogeneous situations, this paper develops an outlier knowledge management framework based on three aspects—dimension, object, and situation—for dealing with extreme public health events. In the context of the COVID-19 pandemic, we apply advanced natural language processing (NLP) technology to conduct data mining and feature extraction on the microblog data from the Wuhan area and the imported case province (Henan Province) during the high and median operating periods of the epidemic. Our experiment indicates that the semantic and sentiment vocabulary of words, the sentiment curve, and the portrait of patients seeking help were all heterogeneous in the context of COVID-19. We extract and acquire the outlier knowledge of COVID-19 and incorporate it into the outlier knowledge base of extreme public health events for knowledge sharing and transformation. The knowledge base serves as a think tank for public opinion guidance and platform suggestions for dealing with extreme public health events. This paper provides novel ideas and methods for outlier knowledge management in healthcare contexts.

Keywords

COVID-19
Analysis of public opinion
Natural language processing
Outlier knowledge management
Governance suggestion

Dr. Huosong Xia graduated from Huazhong University of Science and Technology in China. Huosong Xia is a professor in the school of management at Wuhan Textile University. He was a visiting scholar at Eller College of Management of the University of Arizona, USA from 2006 to 2007. His main research interests are knowledge management, data mining, e-Commerce, and logistics information system. His publications have appeared in over 100 referred papers in journals, book chapters, and conferences, such as Journal of Knowledge Management, International Journal of Knowledge Management, Journal of Knowledge Management Practice, International Journal of Management, Journal of Systems Science and Information, Journal of Convergence Information Technology, Journal of Grey System, Financial Innovation (Springer), and World Journal of Social Science Research. He has obtained research funding from 4 projects with National Social Science Foundation of China and National Science Foundation of China.

Ms. Wuyue An is a master candidate in the school of management at Wuhan Textile University. In 2018, She got her bachelor's degree from the school of software at Zhengzhou University. Her main research interests are knowledge management, data mining and, e-Commerce, and Logistics Information System.

Ms. Jiaze Li is an undergraduate student in the school of software at Zhengzhou University. Her research interest is information security.

Dr. Zuopeng (Justin) Zhang is a faculty member in the Coggin College of Business at University of North Florida. He was previously an Associate Professor of Management, Information Systems, and Analytics at State University of New York at Plattsburgh. He received his Ph.D. in Business Administration with a concentration on Management Science and Information Systems from Pennsylvania State University, University Park. His research interests include economics of information systems, knowledge management, electronic business, business process management, information security, and social networking. He is the editor-in-chief of the Journal of Global Information Management, an ABET program evaluator, and an IEEE senior member.

View Abstract