CLApr 30

Confidence Estimation in Automatic Short Answer Grading with LLMs

arXiv:2605.0020060.7
Predicted impact top 84% in CL · last 90 daysOriginality Incremental advance
AI Analysis

For educators and developers of AI-assisted assessment systems, this work addresses the need for trustworthy confidence estimates in LLM-based grading to enable safe human-AI collaboration.

The paper investigates confidence estimation for automatic short answer grading with LLMs, finding that model-based confidence alone is insufficient. They propose a hybrid framework combining model-based signals with dataset-derived aleatoric uncertainty, which yields more reliable estimates and improves selective grading performance.

Automatic Short Answer Grading (ASAG) with generative large language models (LLMs) has recently demonstrated strong performance without task-specific fine-tuning, while also enabling the generation of synthetic feedback for educational assessment. Despite these advances, LLM-based grading remains imperfect, making reliable confidence estimates essential for safe and effective human-AI collaboration in educational decision-making. In this work, we investigate confidence estimation for ASAG with LLMs by jointly considering model-based confidence signals and dataset-derived uncertainty. We systematically compare three model-based confidence estimation strategies, namely verbalizing, latent, and consistency-based confidence estimation, and show that model-based confidence alone is insufficient to reliably capture uncertainty in ASAG. To address this limitation, we propose a hybrid confidence framework that integrates model-based confidence signals with an explicit estimate of dataset-derived aleatoric uncertainty. Aleatoric uncertainty is operationalized by clustering semantically embedded student responses and quantifying within-cluster heterogeneity. Our results demonstrate that the proposed hybrid confidence measure yields more reliable confidence estimates and improves selective grading performance compared to single-source approaches. Overall, this work advances confidence-aware LLM-based grading for human-in-the-loop assessment, supporting more trustworthy AI-assisted educational assessment systems.

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