Authors
Ryan S Baker, Aaron Hawn
Publication date
2022/12
Source
International Journal of Artificial Intelligence in Education
Pages
1-41
Publisher
Springer New York
Description
In this paper, we review algorithmic bias in education, discussing the causes of that bias and reviewing the empirical literature on the specific ways that algorithmic bias is known to have manifested in education. While other recent work has reviewed mathematical definitions of fairness and expanded algorithmic approaches to reducing bias, our review focuses instead on solidifying the current understanding of the concrete impacts of algorithmic bias in education—which groups are known to be impacted and which stages and agents in the development and deployment of educational algorithms are implicated. We discuss theoretical and formal perspectives on algorithmic bias, connect those perspectives to the machine learning pipeline, and review metrics for assessing bias. Next, we review the evidence around algorithmic bias in education, beginning with the most heavily-studied categories of race …
Total citations
2021202220232024278126151
Scholar articles
RS Baker, A Hawn - International Journal of Artificial Intelligence in …, 2022