cs.AI updates on arXiv.org 08月04日 12:27
Beyond Agreement: Rethinking Ground Truth in Educational AI Annotation
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本文讨论了在AI教育应用中,过度依赖人类IRR(评分者间一致性)对数据标注质量的影响,提出采用多标签标注、专家方法等互补评价方法,以提高标注质量和模型预测能力。

arXiv:2508.00143v1 Announce Type: new Abstract: Humans can be notoriously imperfect evaluators. They are often biased, unreliable, and unfit to define "ground truth." Yet, given the surging need to produce large amounts of training data in educational applications using AI, traditional inter-rater reliability (IRR) metrics like Cohen's kappa remain central to validating labeled data. IRR remains a cornerstone of many machine learning pipelines for educational data. Take, for example, the classification of tutors' moves in dialogues or labeling open responses in machine-graded assessments. This position paper argues that overreliance on human IRR as a gatekeeper for annotation quality hampers progress in classifying data in ways that are valid and predictive in relation to improving learning. To address this issue, we highlight five examples of complementary evaluation methods, such as multi-label annotation schemes, expert-based approaches, and close-the-loop validity. We argue that these approaches are in a better position to produce training data and subsequent models that produce improved student learning and more actionable insights than IRR approaches alone. We also emphasize the importance of external validity, for example, by establishing a procedure of validating tutor moves and demonstrating that it works across many categories of tutor actions (e.g., providing hints). We call on the field to rethink annotation quality and ground truth--prioritizing validity and educational impact over consensus alone.

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AI教育 数据标注 IRR 互补评价方法
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