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Discretion in the Loop: Human Expertise in Algorithm-Assisted College Advising

Main:29 Pages
7 Figures
Bibliography:7 Pages
15 Tables
Appendix:19 Pages
Abstract

In higher education, many institutions use algorithmic alerts to flag at-risk students and deliver advising at scale. While much research has focused on evaluating algorithmic predictions, relatively little is known about how discretionary interventions by human experts shape outcomes in algorithm-assisted settings. We study this question using rich quantitative and qualitative data from a randomized controlled trial of an algorithm-assisted advising program at Georgia State University. Taking a mixed-methods approach, we examine whether and how advisors use context unavailable to an algorithm to guide interventions and influence student success. We develop a causal graphical framework for human expertise in the interventional setting, extending prior work on discretion in purely predictive settings. We then test a necessary condition for discretionary expertise using structured advisor logs and student outcomes data, identifying several interventions that meet the criterion for statistical significance. Accordingly, we estimate that 2 out of 3 interventions taken by advisors in the treatment arm were plausibly "expertly targeted" to students using non-algorithmic context. Systematic qualitative analysis of advisor notes corroborates these findings, showing a pattern of advisors incorporating diverse forms of contextual information--such as personal circumstances, financial issues, and student engagement--into their decisions. Our results offer theoretical and practical insight into the real-world effectiveness of algorithm-supported college advising, and underscore the importance of accounting for human expertise in the design, evaluation, and implementation of algorithmic decision systems.

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@article{schechtman2025_2505.13325,
  title={ Discretion in the Loop: Human Expertise in Algorithm-Assisted College Advising },
  author={ Kara Schechtman and Benjamin Brandon and Jenise Stafford and Hannah Li and Lydia T. Liu },
  journal={arXiv preprint arXiv:2505.13325},
  year={ 2025 }
}
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