TY - GEN
T1 - Modeling Women’s Elective Choices in Computing
AU - Bradley, Steven
AU - Parker, Miranda C.
AU - Altin, Rukiye
AU - Barker, Lecia
AU - Hooshangi, Sara
AU - Kunkeler, Thom
AU - Lennon, Ruth G.
AU - McNeill, Fiona
AU - Minguillón, Julià
AU - Parkinson, Jack
AU - Peltsverger, Svetlana
AU - Sibia, Naaz
N1 - Publisher Copyright:
© 2023 Copyright held by the owner/author(s).
PY - 2023/12/22
Y1 - 2023/12/22
N2 - Evidence-based strategies suggest ways to reduce the gender gap in computing. For example, elective classes are valuable in enabling students to choose in which directions to expand their computing knowledge in areas aligned with their interests. The availability of electives of interest may also make computing programs of study more meaningful to women. However, research on which elective computing topics are more appealing to women is often class or institution specific. In this study, we investigate differences in enrollment within undergraduate-level elective classes in computing to study differences between women and men. The study combined data from nine institutions from both Western Europe and North America and included 272 different classes with 49,710 student enrollments. These classes were encoded using ACM curriculum guidelines and combined with the enrollment data to build a hierarchical statistical model of factors affecting student choice. Our model shows which elective topics are less popular with all students (including fundamentals of programming languages and parallel and distributed computing), and which elective topics are more popular with women students (including mathematical and statistical foundations, human computer interaction and society, ethics, and professionalism). Understanding which classes appeal to different students can help departments gain insight of student choices and develop programs accordingly. Additionally, these choices can also help departments explore whether some students are less likely to choose certain classes than others, indicating potential barriers to participation in computing.
AB - Evidence-based strategies suggest ways to reduce the gender gap in computing. For example, elective classes are valuable in enabling students to choose in which directions to expand their computing knowledge in areas aligned with their interests. The availability of electives of interest may also make computing programs of study more meaningful to women. However, research on which elective computing topics are more appealing to women is often class or institution specific. In this study, we investigate differences in enrollment within undergraduate-level elective classes in computing to study differences between women and men. The study combined data from nine institutions from both Western Europe and North America and included 272 different classes with 49,710 student enrollments. These classes were encoded using ACM curriculum guidelines and combined with the enrollment data to build a hierarchical statistical model of factors affecting student choice. Our model shows which elective topics are less popular with all students (including fundamentals of programming languages and parallel and distributed computing), and which elective topics are more popular with women students (including mathematical and statistical foundations, human computer interaction and society, ethics, and professionalism). Understanding which classes appeal to different students can help departments gain insight of student choices and develop programs accordingly. Additionally, these choices can also help departments explore whether some students are less likely to choose certain classes than others, indicating potential barriers to participation in computing.
KW - Computing education
KW - Curriculum
KW - Electives
KW - Inclusion
KW - Women
UR - http://www.scopus.com/inward/record.url?scp=85182951830&partnerID=8YFLogxK
U2 - 10.1145/3623762.3633497
DO - 10.1145/3623762.3633497
M3 - Conference contribution
AN - SCOPUS:85182951830
T3 - ITiCSE-WGR 2023 - Proceedings of the 2023 Working Group Reports on Innovation and Technology in Computer Science Education
SP - 196
EP - 226
BT - ITiCSE-WGR 2023 - Proceedings of the 2023 Working Group Reports on Innovation and Technology in Computer Science Education
PB - Association for Computing Machinery, Inc
T2 - 2023 Working Group Reports on Innovation and Technology in Computer Science Education, ITiCSE-WGR 2023
Y2 - 7 July 2023 through 12 July 2023
ER -