Judging facts, judging norms: Training machine learning models to judge humans requires a modified approach to labeling data
Author(s)
Balagopalan, Aparna; Madras, David; Yang, David H.; Hadfield-Menell, Dylan; Hadfield, Gillian K.; Ghassemi, Marzyeh; ... Show more Show less
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As governments and industry turn to increased use of automated decision systems, it becomes essential to consider how closely such systems can reproduce human judgment. We identify a core potential failure, finding that annotators label objects differently depending on whether they are being asked a factual question or a normative question. This challenges a natural assumption maintained in many standard machine-learning (ML) data acquisition procedures: that there is no difference between predicting the factual classification of an object and an exercise of judgment about whether an object violates a rule premised on those facts. We find that using factual labels to train models intended for normative judgments introduces a notable measurement error. We show that models trained using factual labels yield significantly different judgments than those trained using normative labels and that the impact of this effect on model performance can exceed that of other factors (e.g., dataset size) that routinely attract attention from ML researchers and practitioners.
Date issued
2023-05-12Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science; Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryPublisher
American Association for the Advancement of Science (AAAS)
Citation
Aparna Balagopalan et al. ,Judging facts, judging norms: Training machine learning models to judge humans requires a modified approach to labeling data.Sci. Adv.9,eabq0701(2023).
Version: Final published version
ISSN
2375-2548
Keywords
Multidisciplinary
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