Startseite The situation of English speaker’s place of origin depending on Chinese dialects
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The situation of English speaker’s place of origin depending on Chinese dialects

  • Min Wang
Veröffentlicht/Copyright: 17. November 2021
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Abstract

This study examines the ability to identify different Chinese dialects through the English language and evaluates how often respondents pay attention to phonological features and rate of speech to explain their categorizations. The research includes 100 Chinese undergraduate students and 100 young people without advanced degrees aged 20 to 25. Discrete independent data samples collected during the interview of participants are analyzed with the help of such statistical methods as Student's t-test, Mann-Whitney U-test, and Wilcoxon's test. The obtained results indirectly show the ability of respondents to identify native and non-native English speakers around the world, as well as determine their nationality. The outcomes of the paper explicate who, in general, categorize Chinese dialects better and which dialects are the most recognizable. Research data reveal a high degree of stereotypization of various dialects, especially the Beijing and U dialects. Moreover, based on the data obtained, it can be concluded that speaking rate significantly affects the perception and classification of a speaker from a particular province of China.

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Published Online: 2021-11-17
Published in Print: 2021-11-25

© 2021 Walter de Gruyter GmbH, Berlin/Boston

Heruntergeladen am 28.9.2025 von https://www.degruyterbrill.com/document/doi/10.1515/dialect-2021-0009/html
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