Briana B. Morrison
Evidence for Teaching Practices that Broaden Participation for Women in Computing
Morrison, Briana B.; Quinn, Beth A.; Bradley, Steven; Buffardi, Kevin; Harrington, Brian; Hu, Helen H.; Kallia, Maria; McNeill, Fiona; Ola, Oluwakemi; Parker, Miranda; Rosato, Jennifer; Waite, Jane
Authors
Beth A. Quinn
Professor Steven Bradley s.p.bradley@durham.ac.uk
Professor
Kevin Buffardi
Brian Harrington
Helen H. Hu
Maria Kallia
Fiona McNeill
Oluwakemi Ola
Miranda Parker
Jennifer Rosato
Jane Waite
Abstract
Computing has, for many years, been one of the least demographically diverse STEM fields, particularly in terms of women's participation [12, 36]. The last decade has seen a proliferation of research exploring new teaching techniques and their effect on the retention of students who have historically been excluded from computing. This research suggests interventions and practices that can affect the inclusiveness of the computer science classroom and potentially improve learning outcomes for all students. But research needs to be translated into practice, and practices need to be taken up in real classrooms. The current paper reports on the results of a focused systematic "state-of-the-art" review of recent empirical studies of teaching practices that have some explicit test of the impact on women in computing. Using the NCWIT Engagement Practices Framework as a means of organization, we summarize this research, outline the practices that have the most empirical support, and suggest where additional research is needed.
Citation
Morrison, B. B., Quinn, B. A., Bradley, S., Buffardi, K., Harrington, B., Hu, H. H., Kallia, M., McNeill, F., Ola, O., Parker, M., Rosato, J., & Waite, J. (2021, December). Evidence for Teaching Practices that Broaden Participation for Women in Computing. Presented at Proceedings of the 2021 Working Group Reports on Innovation and Technology in Computer Science Education
Presentation Conference Type | Conference Paper (published) |
---|---|
Conference Name | Proceedings of the 2021 Working Group Reports on Innovation and Technology in Computer Science Education |
Acceptance Date | Dec 22, 2021 |
Online Publication Date | Jan 6, 2022 |
Publication Date | 2021 |
Deposit Date | Jan 7, 2022 |
Publicly Available Date | Jan 11, 2022 |
Pages | 57-131 |
Book Title | ITiCSE-WGR '21: Proceedings of the 2021 Working Group Reports on Innovation and Technology in Computer Science Education |
DOI | https://doi.org/10.1145/3502870.3506568 |
Public URL | https://durham-repository.worktribe.com/output/1137099 |
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