Save It for the "hot" Day: An LLM-Empowered Visual Analytics System for Heat Risk Management.

Haobo Li, Wong Kam-Kwai, Yan Luo, Juntong Chen, Chengzhong Liu, Yaxuan Zhang, Alexis Kai Hon Lau, Huamin Qu, Dongyu Liu
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Abstract

The escalating frequency and intensity of heat-related climate events, particularly heatwaves, emphasize the pressing need for advanced heat risk management strategies. Current approaches, primarily relying on numerical models, face challenges in spatial-temporal resolution and in capturing the dynamic interplay of environmental, social, and behavioral factors affecting heat risks. This has led to difficulties in translating risk assessments into effective mitigation actions. Recognizing these problems, we introduce a novel approach leveraging the burgeoning capabilities of Large Language Models (LLMs) to extract rich and contextual insights from news reports. We hence propose an LLM-empowered visual analytics system, Havior, that integrates the precise, data-driven insights of numerical models with nuanced news report information. This hybrid approach enables a more comprehensive assessment of heat risks and better identification, assessment, and mitigation of heat-related threats. The system incorporates novel visualization designs, such as "thermoglyph" and news glyph, enhancing intuitive understanding and analysis of heat risks. The integration of LLM-based techniques also enables advanced information retrieval and semantic knowledge extraction that can be guided by experts' analytics needs. We conducted an experiment on information extraction, a case study on the 2022 China Heatwave, and an expert survey & interview collaborated with six domain experts, demonstrating the usefulness of our system in providing in-depth and actionable insights for heat risk management.

把它保存到“炎热”的日子:一个法学硕士授权的热风险管理可视化分析系统。
与热有关的气候事件,特别是热浪的频率和强度不断上升,强调了对先进的热风险管理战略的迫切需要。目前的方法主要依赖于数值模型,在时空分辨率和捕捉影响热风险的环境、社会和行为因素的动态相互作用方面面临挑战。这导致难以将风险评估转化为有效的缓解行动。认识到这些问题,我们引入了一种新的方法,利用大型语言模型(llm)的新兴功能,从新闻报道中提取丰富的上下文见解。因此,我们提出了一个法学硕士授权的视觉分析系统,behavior,它将精确的,数据驱动的数值模型洞察力与细致入微的新闻报道信息相结合。这种混合方法能够更全面地评估热风险,更好地识别、评估和减轻与热有关的威胁。该系统采用了新颖的可视化设计,如“热字形”和新闻字形,增强了对热风险的直观理解和分析。基于法学硕士技术的集成还支持高级信息检索和语义知识提取,可以根据专家的分析需求进行指导。我们进行了信息提取实验、2022年中国热浪的案例研究以及与六位领域专家合作的专家调查和访谈,证明了我们的系统在为热风险管理提供深入和可操作的见解方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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