Racial, skin tone, and sex disparities in automated proctoring software

Author:

Yoder-Himes Deborah R.,Asif Alina,Kinney Kaelin,Brandt Tiffany J.,Cecil Rhiannon E.,Himes Paul R.,Cashon Cara,Hopp Rachel M. P.,Ross Edna

Abstract

Students of color, particularly women of color, face substantial barriers in STEM disciplines in higher education due to social isolation and interpersonal, technological, and institutional biases. For example, online exam proctoring software often uses facial detection technology to identify potential cheating behaviors. Undetected faces often result in flagging and notifying instructors of these as “suspicious” instances needing manual review. However, facial detection algorithms employed by exam proctoring software may be biased against students with certain skin tones or genders depending on the images employed by each company as training sets. This phenomenon has not yet been quantified nor is it readily accessible from the companies that make this type of software. To determine if the automated proctoring software adopted at our institution and which is used by at least 1,500 universities nationally, suffered from a racial, skin tone, or gender bias, the instructor outputs from ∼357 students from four courses were examined. Student data from one exam in each course was collected, a high-resolution photograph was used to manually categorize skin tone, and the self-reported race and sex for each student was obtained. The likelihood that any groups of students were flagged more frequently for potential cheating was examined. The results of this study showed a significant increase in likelihood that students with darker skin tones and Black students would be marked as more in need of instructor review due to potential cheating. Interestingly, there were no significant differences between male and female students when considered in aggregate but, when examined for intersectional differences, women with the darkest skin tones were far more likely than darker skin males or lighter skin males and females to be flagged for review. Together, these results suggest that a major automated proctoring software may employ biased AI algorithms that unfairly disadvantage students. This study is novel as it is the first to quantitatively examine biases in facial detection software at the intersection of race and sex and it has potential impacts in many areas of education, social justice, education equity and diversity, and psychology.

Publisher

Frontiers Media SA

Subject

Education

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Generative AI and Its Implications for Higher Education Students' Creativity;Advances in Educational Technologies and Instructional Design;2024-08-27

2. Implementation of Automatic Proctoring in Online Exam System;2024 International Electronics Symposium (IES);2024-08-06

3. Revisión sistemática de la literatura sobre las tecnologías de e-proctoring para la supervisión de exámenes en educación superior;Perfiles Educativos;2024-07-14

4. Decolonizing digital learning: equity through intentional course design;Distance Education;2024-07-02

5. Ethics of Artificial Intelligence in Academia;Springer International Handbooks of Education;2024

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