交叉性与计算机科学人口统计学的探索

Stephanie J. Lunn, Leila Zahedi, Monique S. Ross, M. Ohland
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引用次数: 17

摘要

尽管计算机行业的预期增长率最高,但这些领域的毕业生仍然不足。吸引足够多的学生来满足需求的努力,对于那些在计算机领域已经代表性不足的群体来说尤其明显,特别是那些自我认同为女性、黑人、西班牙裔/拉丁裔或美洲原住民的个人。之前的研究已经开始研究围绕粘性和留存率的问题,但要缩小差距并扩大参与度,还需要更多的了解。在这项研究中,我们提供了来自多机构调查工程纵向发展数据库的定量证据,这是一个纵向的、多机构的数据库,用来描述边缘化群体在计算机科学领域的参与趋势。使用描述性统计,我们展示了1987年至2018年间位于种族/民族和性别交叉点的学生的入学率和毕业率。在这项工作中,我们观察到黑人男性和女性,特别是白人女性的显著变化时期,西班牙裔/拉丁裔和美洲原住民男性和女性以及亚洲女性的参与度一直很低。为了为参与的明显高峰和低谷提供框架,我们应用历史背景分析来描述可能影响每个群体的政治、经济和社会因素和事件。这些结果使统计工作中被忽视的人群成为人们关注的焦点,并有可能让教育工作者、管理人员和研究人员了解计算机领域的入学率和毕业率随着时间的推移是如何变化的。此外,它们还提供了对变迁的潜在原因的洞察,以鼓励所有学生在未来获得更平等的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of Intersectionality and Computer Science Demographics
Although computing occupations have some of the greatest projected growth rates, there remains a deficit of graduates in these fields. The struggle to engage enough students to meet demands is particularly pronounced for groups already underrepresented in computing, specifically, individuals that self-identify as a woman, or as Black, Hispanic/Latinx, or Native American. Prior studies have begun to examine issues surrounding engagement and retention, but more understanding is needed to close the gap, and to broaden participation. In this research, we provide quantitative evidence from the Multiple-Institution Database for Investigating Engineering Longitudinal Development—a longitudinal, multi-institutional database to describe participation trends of marginalized groups in computer science. Using descriptive statistics, we present the enrollment and graduation rates for those situated at the intersection of race/ethnicity and gender between 1987 and 2018. In this work, we observed periods of significant flux for Black men and women, and White women in particular, and consistently low participation of Hispanic/Latinx and Native American men and women, and Asian women. To provide framing for the evident peaks and valleys in participation, we applied historical context analysis to describe the political, economic, and social factors and events that may have impacted each group. These results put a spotlight on populations largely overlooked in statistical work and have the potential to inform educators, administrators, and researchers about how enrollments and graduation rates have changed over time in computing fields. In addition, they offer insight into potential causes for the vicissitudes, to encourage more equal access for all students going forward.
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