AI and Holistic Review
Author(s) -
AJ Alvero,
Noah Arthurs,
anthony lising antonio,
Benjamin W. Domingue,
Ben Gebre-Medhin,
Sonia Giebel,
Mitchell L. Stevens
Publication year - 2020
Publication title -
proceedings of the aaai/acm conference on ai, ethics, and society
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3375627.3375871
Subject(s) - narrative , legitimacy , logistic regression , discretion , audit , reading (process) , classifier (uml) , computer science , psychology , artificial intelligence , political science , law , machine learning , management , politics , economics , philosophy , linguistics
College admissions in the United States is carried out by a human-centered method of evaluation known as holistic review, which typically involves reading original narrative essays submitted by each applicant. The legitimacy and fairness of holistic review, which gives human readers significant discretion over determining each applicant's fitness for admission, has been repeatedly challenged in courtrooms and the public sphere. Using a unique corpus of 283,676 application essays submitted to a large, selective, state university system between 2015 and 2016, we assess the extent to which applicant demographic characteristics can be inferred from application essays. We find a relatively interpretable classifier (logistic regression) was able to predict gender and household income with high levels of accuracy. Findings suggest that data auditing might be useful in informing holistic review, and perhaps other evaluative systems, by checking potential bias in human or computational readings.
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