International · International Journal · 2026
A Framework for Large Language Model-based Auto-Labeling and Validation using Reliable Keywords to Analyze Causes of Autonomous Vehicle Disengagements
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LLMtransportation analyticslegal AIpolicy supportdomain-specific reasoningRAGtext miningjudgement predictionInternationalInternational Journal
Citation-ready BibTeX
@unpublished{noh2026aframeworkforlargelangua,
title = {A Framework for Large Language Model-based Auto-Labeling and Validation using Reliable Keywords to Analyze Causes of Autonomous Vehicle Disengagements},
author = {J. Yoon and B. Noh and I. Kim},
year = {2026},
journal = {Engineering Applications of Artificial Intelligence},
note = {Under review}
}
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