Enhancing emergency decision-making with knowledge graphs and large language models

Minze Chen, Zhenxiang Tao, Weitong Tang, Tingxin Qin, Rui Yang*, Chunli Zhu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Emergency management urgently requires comprehensive knowledge while having a high possibility to go beyond individuals’ cognitive scope. Therefore, artificial intelligence(AI) supported decision-making under that circumstance is of vital importance. Recent emerging large language models (LLM) provide a new direction for enhancing targeted machine intelligence. However, the utilization of LLM directly would inevitably introduce unreliable output for its inherent issue of hallucination and poor reasoning skills. In this work, we develop a system called Enhancing Emergency decision-making with Knowledge Graph and LLM (E-KELL), which provides evidence-based decision-making in various emergency stages. The study constructs a structured emergency knowledge graph and guides LLMs to reason over it via a prompt chain. In real-world evaluations, E-KELL demonstrates significant improvement over baseline models in various emergency response scenarios, as rated by emergency commanders and firefighters. This work introduces a novel approach to applying LLMs to enhance emergency decision-making.

Original languageEnglish
Article number104804
JournalInternational Journal of Disaster Risk Reduction
Volume113
DOIs
Publication statusPublished - 15 Oct 2024

Keywords

  • Decision support system
  • Emergency decision support
  • Knowledge graph
  • Large language model

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