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Employing text mining to investigate language attitudes and social identity on Chinese social media

  • City University of Macau
  • Guangdong Finance & Trade Vocational College

科研成果: 期刊稿件文章同行评审

摘要

Language attitudes are a central focus in sociolinguistics, with research methods steadily advancing. This study employed the text mining method, using keywords to retrieve 4.3k relevant Weibo posts to build a corpus. The BERTopic analysis reveals that discussions on Weibo primarily focus on three themes: cultural entertainment, language and regional issues, and education and exams. These topics demonstrate both short-term viral dissemination and long-term persistence. Manual coding indicates that discussions on language attitudes predominantly revolve around social contexts. Sentiment analysis shows that overall sentiment toward language attitudes is largely neutral (36.72%), with positive sentiment (33.36%) slightly exceeding negative sentiment (29.92%). Further analysis highlights that language attitudes are shaped by interpersonal emotional projection, social recognition and identity construction, and the functional role of language as a communication tool. Moreover, a societal expectation for ‘accent standardization’ is evident in discussions concerning both Mandarin and regional dialects.

源语言英语
页(从-至)526-545
页数20
期刊International Journal of Multilingualism
23
1
DOI
出版状态已出版 - 2026
已对外发布

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