Analysis of COVID-19-Related User Content on the Baseball Bulletin Board in 2020 through Text Mining

Author:

Ma Shang-Chun1ORCID,Su Ching-Ya1,Chen Sheng-Fong2,Sato Shintaro3ORCID,Ma Shang-Ming2

Affiliation:

1. Institute of Physical Education, Health and Leisure Studies, National Cheng Kung University, No. 1, Daxue Road, East District., Tainan 701401, Taiwan

2. Department of Recreational Sport and Health Promotion, National Pingtung University of Science and Technology, No. 1, Shuefu Road, Neipu, Pingtung 912301, Taiwan

3. Faculty of Sport Sciences, Waseda University, 3-4-1 Higashifushimi STEP22 Nishitokyo, Tokyo 202-0021, Japan

Abstract

The world engaged in online sport watching during COVID-19. Fortunately, in Taiwan, the pandemic was stably controlled in 2020, allowing for the continuation of the Chinese Professional Baseball League (CPBL); this attracted international attention and encouraged relevant discussions on social media in Taiwan. In the present study, through text mining, we analyzed user content (e.g., the concepts of sports service quality and social identity) on the Professional Technology Temple (PTT) baseball board—the largest online bulletin board system in Taiwan. A predictive model was constructed to assess PTT users’ COVID-19-related comments in 2020. A total of 422 articles and 21,167 comments were retrieved. PTT users interacted more frequently during the closed-door period, particularly during the beginning of the CPBL in April. Effective pandemic prevention, which garnered global attention to the league, generated a sense of national identity among the users, which was strengthened with the development of peripheral products, such as English broadcasting and live broadcasting on Twitch. We used machine learning to develop a chatbot for predicting the attributes of users’ comments; this chatbot may improve CPBL teams’ understanding of public opinion trends. Our findings may help stakeholders develop tailored programs for online spectators of sports during pandemic situations.

Publisher

MDPI AG

Subject

Behavioral Neuroscience,General Psychology,Genetics,Development,Ecology, Evolution, Behavior and Systematics

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