AI and Holistic Review: Informing Human Reading in College Admissions

AJ Alvero, Noah Arthurs, A. Antonio, B. Domingue, Ben Gebre-Medhin, Sonia Giebel, M. Stevens
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引用次数: 17

Abstract

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.
人工智能和整体评论:在大学招生中告知人类阅读
美国的大学录取是通过一种以人为本的评估方法进行的,这种方法被称为整体审查,通常包括阅读每个申请人提交的原创叙述文章。整体审查的合法性和公正性在法庭和公共领域不断受到挑战,它赋予人类读者很大的自由裁量权来决定每个申请人是否适合入学。使用2015年至2016年间提交给大型,选择性的州立大学系统的283,676份申请论文的独特语料库,我们评估了从申请论文中推断申请人人口特征的程度。我们发现一个相对可解释的分类器(逻辑回归)能够以较高的准确性预测性别和家庭收入。研究结果表明,通过检查人类或计算读数中的潜在偏差,数据审计可能有助于为整体审查提供信息,也许还有助于其他评估系统。
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