NaRuto: Automatically Acquiring Planning Models from Narrative Texts. Li, R., Cui, L., Lin, S., & Haslum, P. In Proceedings of the 38th AAAI Conference on Artificial Intelligence (AAAI 2024), pages 20194–20202, 2024. AAAI Press.
abstract   bibtex   
Domain model acquisition has been identified as a bottleneck in the application of planning technology, especially within narrative planning. Learning action models from narrative texts in an automated way is essential to overcome this barrier, but challenging because of the inherent complexities of such texts. We present an evaluation of planning domain models derived from narrative texts using our fully automated, unsupervised system, NaRuto. Our system combines structured event extraction, predictions of commonsense event relations, and textual contradictions and similarities. Evaluation results show that NaRuto generates domain models of significantly better quality than existing fully automated methods, and even sometimes on par with those created by semi-automated methods, with human assistance.
@InProceedings{Li2024DomainLearning,
  author    = {Ruiqi Li and Leyang Cui and Songtuan Lin and Patrik Haslum},
  booktitle = {Proceedings of the 38th AAAI Conference on Artificial Intelligence (AAAI 2024)},
  title     = {NaRuto: Automatically Acquiring Planning Models from Narrative Texts},
  year      = {2024},
  publisher = {AAAI Press},
  abstract  = {Domain model acquisition has been identified as a bottleneck in the application of planning technology, especially within narrative planning. Learning action models from narrative texts in an automated way is essential to overcome this barrier, but challenging because of the inherent complexities of such texts. We present an evaluation of planning domain models derived from narrative texts using our fully automated, unsupervised system, NaRuto. Our system combines structured event extraction, predictions of commonsense event relations, and textual contradictions and similarities. Evaluation results show that NaRuto generates domain models of significantly better quality than existing fully automated methods, and even sometimes on par with those created by semi-automated methods, with human assistance.},
  pages     = {20194--20202}
}

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