Extracting Disaster Impacts and Impact Related Locations in Social Media Posts Using Large Language Models
Sameeah Noreen Hameed, Surangika Ranathunga, Raj Prasanna, Kristin Stock, Christopher B. Jones

TL;DR
This paper presents a fine-tuned large language model approach to accurately extract disaster impacts and impacted locations from social media posts, enhancing situational awareness during emergencies.
Contribution
It introduces a novel fine-tuning method for LLMs to distinguish impacted locations from non-impacted ones in disaster-related social media content.
Findings
Achieved F1-score of 0.69 for impact extraction
Achieved F1-score of 0.74 for impacted location extraction
Outperformed baseline models significantly
Abstract
Large-scale disasters can often result in catastrophic consequences on people and infrastructure. Situation awareness about such disaster impacts generated by authoritative data from in-situ sensors, remote sensing imagery, and/or geographic data is often limited due to atmospheric opacity, satellite revisits, and time limitations. This often results in geo-temporal information gaps. In contrast, impact-related social media posts can act as "geo-sensors" during a disaster, where people describe specific impacts and locations. However, not all locations mentioned in disaster-related social media posts relate to an impact. Only the impacted locations are critical for directing resources effectively. e.g., "The death toll from a fire which ripped through the Greek coastal town of #Mati stood at 80, with dozens of people unaccounted for as forensic experts tried to identify victims who were…
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Taxonomy
TopicsPublic Relations and Crisis Communication · Disaster Management and Resilience · Geographic Information Systems Studies
