JOURNAL ARTICLE

Implicit language attitudes among young, white, L1-Afrikaans speakers towards two South African Englishes: The role of gender and family language.

  • Published In: English World-Wide, 2025, v. 46, n. 2. P. 127 1 of 3

  • Database: Communication Source 2 of 3

  • Authored By: Álvarez-Mosquera, Pedro; Bekker, Ian; Marín-Gutiérrez, Alejandro 3 of 3

Abstract

This paper reports on an Implicit Association Test (IAT)-based investigation of the language-attitudes of the white (Afrikaans and English) speech-communities of South Africa, with a focus on young, L1-Afrikaans speakers. Drawing from an extensive literature review, two hypotheses were formulated: (1) participants would exhibit out-group bias towards Standard South African English over Afrikaans-accented English; (2) contextually relevant socio-demographic and sociolinguistic factors would explain this bias. Contrary to the first hypothesis, L1-Afrikaans speakers showed an implicit bias towards their in-group accent. Gender and family language emerged as significant factors in explaining these results. More specifically, females were found to show significantly more in-group bias than males, while subjects reporting both English and Afrikaans as family languages showed the most in-group bias. Given that the outcomes from this implicit approach provide new insights, further research into the role of gender and language-loyalty within this speech-community through narrative-based elicitation methods is recommended. [ABSTRACT FROM AUTHOR]

Additional Information

  • Source:English World-Wide. 2025/05, Vol. 46, Issue 2, p127
  • Document Type:Article
  • Subject Area:Literature and Writing
  • Publication Date:2025
  • ISSN:0172-8865
  • DOI:10.1075/eww.24025.alv
  • Accession Number:187643320
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