Mao Wang
2026
Can Large Language Models Effectively Support Decision-Making in Sudden Emergencies?
Mengna Zhu | Jibing Wu | Lihua Liu | Yuran Gong | Yang Hao | Fu Yachao | Mao Wang | Lei Hou | Juanzi Li
Findings of the Association for Computational Linguistics: ACL 2026
Mengna Zhu | Jibing Wu | Lihua Liu | Yuran Gong | Yang Hao | Fu Yachao | Mao Wang | Lei Hou | Juanzi Li
Findings of the Association for Computational Linguistics: ACL 2026
Emergency response is a safety-critical public governance task that demands accurate and timely decision-making based on complex event information. This process involves multiple stages, including information collection, integration, analysis, risk assessment, and decision recommendation. Existing research has predominantly concentrated on the earlier stages, while studies focusing on the decision support phase remain underexplored, primarily due to the lack of suitable datasets for reliable and compliance-aware decision-oriented modeling and evaluation. To bridge this gap, we introduce the first real-world Emergency Decision-Making dataset EDM-Bench, comprising 1,179 instances spanning diverse task formats, including judgment, choice, short-answer, and structured emergency report generation. We also construct a structured rule repository, EDM-R², which contains 3,406 parsed emergency regulations to enhance decision reliability. Building on these resources, we propose a rule-enhanced reasoning framework, R³V-EDM, which integrates external regulatory knowledge with constrained inference mechanisms to improve both decision safety and interpretability. Extensive experiments demonstrate the inherent complexity of emergency decision-making and validate the effectiveness of our approach in enabling more reliable and trustworthy decisions.
2024
CMNEE:A Large-Scale Document-Level Event Extraction Dataset Based on Open-Source Chinese Military News
Mengna Zhu | Zijie Xu | Kaisheng Zeng | Kaiming Xiao | Mao Wang | Wenjun Ke | Hongbin Huang
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Mengna Zhu | Zijie Xu | Kaisheng Zeng | Kaiming Xiao | Mao Wang | Wenjun Ke | Hongbin Huang
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Extracting structured event knowledge, including event triggers and corresponding arguments, from military texts is fundamental to many applications, such as intelligence analysis and decision assistance. However, event extraction in the military field faces the data scarcity problem, which impedes the research of event extraction models in this domain. To alleviate this problem, we propose CMNEE, a large-scale, document-level open-source Chinese Military News Event Extraction dataset. It contains 17,000 documents and 29,223 events, which are all manually annotated based on a pre-defined schema for the military domain including 8 event types and 11 argument role types. We designed a two-stage, multi-turns annotation strategy to ensure the quality of CMNEE and reproduced several state-of-the-art event extraction models with a systematic evaluation. The experimental results on CMNEE fall shorter than those on other domain datasets obviously, which demonstrates that event extraction for military domain poses unique challenges and requires further research efforts. Our code and data can be obtained from https://github.com/Mzzzhu/CMNEE. Keywords: Corpus,Information Extraction, Information Retrieval, Knowledge Discovery/Representation