International · International Conference · 2025
DARK-LLM: Description data auto-labeling with reliable keyword using large language model for analyzing causes of autonomous vehicle disengagements
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LLMtransportation analyticslegal AIpolicy supportdomain-specific reasoningRAGtext miningjudgement predictionInternationalInternational Conference
Citation-ready BibTeX
@inproceedings{noh2025darkllmdescriptiondataau,
title = {DARK-LLM: Description data auto-labeling with reliable keyword using large language model for analyzing causes of autonomous vehicle disengagements},
author = {J. Yoon and B. Noh and Inhi Kim},
year = {2025},
journal = {2025 Transportation Research Board Annual Meeting , Jan 5-12, 2025, Washington D.C., USA}
}
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