Toward Argument‐Based Fairness with an Application to AI‐Enhanced Educational Assessments

Article Status
Published
Authors/contributors
Title
Toward Argument‐Based Fairness with an Application to AI‐Enhanced Educational Assessments
Abstract
Abstract The field of educational measurement places validity and fairness as central concepts of assessment quality. Prior research has proposed embedding fairness arguments within argument‐based validity processes, particularly when fairness is conceived as comparability in assessment properties across groups. However, we argue that a more flexible approach to fairness arguments that occurs outside of and complementary to validity arguments is required to address many of the views on fairness that a set of assessment stakeholders may hold. Accordingly, we focus this manuscript on two contributions: (a) introducing the argument‐based fairness approach to complement argument‐based validity for both traditional and artificial intelligence (AI)‐enhanced assessments and (b) applying it in an illustrative AI assessment of perceived hireability in automated video interviews used to prescreen job candidates. We conclude with recommendations for further advancing argument‐based fairness approaches.
Publication
Journal of Educational Measurement
Volume
59
Issue
3
Pages
362-388
Date
09/2022
Journal Abbr
J. Educ. Meas.
Language
en
ISSN
0022-0655, 1745-3984
Accessed
22/09/2025, 20:32
Library Catalogue
DOI.org (Crossref)
Extra
Citation Key: huggins-manley2022
Citation
Huggins‐Manley, A. C., Booth, B. M., & D’Mello, S. K. (2022). Toward Argument‐Based Fairness with an Application to AI‐Enhanced Educational Assessments. Journal of Educational Measurement, 59(3), 362–388. https://doi.org/10.1111/jedm.12334
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