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Exploring the impact of gender identity and stereotypes on secondary pupils’ computer science enrolment interest

Exploring the impact of gender identity and stereotypes on secondary pupils’ computer science enrolment interest
Exploring the impact of gender identity and stereotypes on secondary pupils’ computer science enrolment interest
There is an underrepresentation of women working in Science, Technology, Engineering and Mathematics (STEM) industries. Initiatives to encourage greater diversity in STEM have been less successful in computer science. This research investigates whether identification with gender stereotypes (defined as the extent to which one identifies with stereotypical masculine or feminine traits) and other factors predict enrolment interest in computer science and whether stereotypical cues impact on these relationships. British secondary school students were shown either a stereotypical or a non-stereotypical computer science classroom and completed measures assessing their identification with gender stereotypes, enrolment interest, belonging, stereotype threat, self-efficacy and utility value. Femininity significantly predicted lower enrolment interest and this relationship appeared to be mediated by stereotype threat. This study extends previous research by showing that young peoples’ identification with gender stereotypes predicts enrolment interest to some degree. We highlight the need to challenge persistent stereotypes regarding who best ‘fits’ computer science.
2040-0748
48-71
Beck, Eleanor
453a5f07-17a0-4fa4-9d0a-1f02d9e008c4
Sargeant, Cora
b2235859-1454-4d8b-8098-a539eea3a1ca
Wright, Sarah
0112d62f-dc04-4919-8bb4-5bd9ec2f825f
Beck, Eleanor
453a5f07-17a0-4fa4-9d0a-1f02d9e008c4
Sargeant, Cora
b2235859-1454-4d8b-8098-a539eea3a1ca
Wright, Sarah
0112d62f-dc04-4919-8bb4-5bd9ec2f825f

Beck, Eleanor, Sargeant, Cora and Wright, Sarah (2023) Exploring the impact of gender identity and stereotypes on secondary pupils’ computer science enrolment interest. International Journal of Gender, Science and Technology, 15 (1), 48-71.

Record type: Article

Abstract

There is an underrepresentation of women working in Science, Technology, Engineering and Mathematics (STEM) industries. Initiatives to encourage greater diversity in STEM have been less successful in computer science. This research investigates whether identification with gender stereotypes (defined as the extent to which one identifies with stereotypical masculine or feminine traits) and other factors predict enrolment interest in computer science and whether stereotypical cues impact on these relationships. British secondary school students were shown either a stereotypical or a non-stereotypical computer science classroom and completed measures assessing their identification with gender stereotypes, enrolment interest, belonging, stereotype threat, self-efficacy and utility value. Femininity significantly predicted lower enrolment interest and this relationship appeared to be mediated by stereotype threat. This study extends previous research by showing that young peoples’ identification with gender stereotypes predicts enrolment interest to some degree. We highlight the need to challenge persistent stereotypes regarding who best ‘fits’ computer science.

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e-pub ahead of print date: 25 July 2023

Identifiers

Local EPrints ID: 481419
URI: http://eprints.soton.ac.uk/id/eprint/481419
ISSN: 2040-0748
PURE UUID: c2994580-ab0a-4f07-ae91-019348734ca7

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Date deposited: 29 Aug 2023 16:32
Last modified: 17 Mar 2024 04:03

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Contributors

Author: Eleanor Beck
Author: Cora Sargeant
Author: Sarah Wright

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