Exploring Why Underrepresented Students Are Less Likely to Study Machine Learning and Artificial Intelligence

Innovation and Technology in Computer Science Education(2021)

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ABSTRACTThere is little research on why underrepresented minorities are less likely to specifically study Machine Learning and Artificial Intelligence (ML/AI). We surveyed 159 undergraduate students about their interest in, exposure to, and personal views on ML/AI in order to explore variations in responses by self-reported gender and race/ethnicity groups. We found that students underrepresented by race/ethnicity are ~6 times less likely to take a traditional ML/AI course than those not underrepresented by race/ethnicity, but no significant difference was found between gender representation. Additionally, students underrepresented by race/ethnicity are more likely to report interest in social, cultural, and political impacts of ML/AI rather than the more technical aspects of ML/AI itself, which is a prevalent interest of students not underrepresented by race/ethnicity. We explore potential reasoning for this difference through further analysis of their survey responses. Encouragingly, we find that regardless of representational status 72.0% of students who report lack of interest in a traditional introductory course are interested in a ML/AI course that focuses more on the political, philosophical, and ethical issues raised by ML/AI and its impacts on society. Our findings suggest that a 'CS Principles" style introductory ML/AI course, emphasizing social and political impacts, could be an effective way to promote diversity in ML/AI.
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