Better Balance in Informatics: An Honest Discussion with Students
- URL: http://arxiv.org/abs/2301.02532v1
- Date: Fri, 6 Jan 2023 14:44:32 GMT
- Title: Better Balance in Informatics: An Honest Discussion with Students
- Authors: Elisavet Kozyri, Mariel Evelyn Markussen Ellingsen, Ragnhild Abel
Grape, Letizia Jaccheri
- Abstract summary: The Department of Computer Science at UiT The Arctic University of Norway has a gender gap at all academic levels.
This paper presents the results of the discussions and the subsequent recommendations that we made to the administration of the department.
- Score: 3.9227642572344177
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In recent years, there has been considerable effort to promote gender balance
in the academic environment of Computer Science (CS). However, there is still a
gender gap at all CS academic levels: from students, to PhD candidates, to
faculty members. This general trend is followed by the Department of Computer
Science at UiT The Arctic University of Norway. To combat this trend within the
CS environment at UiT, we embarked on structured discussions with students of
our department. After analyzing the data collected from these discussions, we
were able to identify action items that could mitigate the existing gender gap
at our department. In particular, these discussions elucidated ways to achieve
(i) a balanced flow of students into CS undergraduate program, (ii) a balanced
CS study environment, and (iii) a balanced flow of graduates into higher levels
of the CS academia (e.g., PhD program). This paper presents the results of the
discussions and the subsequent recommendations that we made to the
administration of the department. We also provide a road-map that other
institutions could follow to organize similar events as part of their
gender-balance action plan.
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