Training-free retrieval-augmented generation with reinforced reasoning for flood damage nowcasting
Lipai Huang, Kai Yin, Chia-Fu Liu, and Ali Mostafavi

TL;DR
The paper introduces R2RAG-Flood, a training-free, reasoning-based framework for flood damage nowcasting that leverages retrieval-augmented generation and achieves promising accuracy and cost-efficiency in a case study.
Contribution
It presents a novel training-free, reasoning-centric approach for flood damage prediction using retrieval-augmented generation without task-specific fine-tuning.
Findings
R2RAG-Flood achieves 0.613--0.668 overall accuracy across LLMs.
It provides structured rationales for predictions.
Lighter variants are more cost-efficient than larger models.
Abstract
We propose R2RAG-Flood, a training-free retrieval-augmented generation framework for flood damage nowcasting with reinforced reasoning. The framework builds a reasoning-centric knowledge base from labeled tabular records, where each sample includes structured predictors, a compact text-mode summary, and a model-generated reasoning trajectory. During inference, the target prompt is augmented with geographically local neighbors and selected free-shots to support case-based reasoning without task-specific fine-tuning. A two-stage procedure first determines damage occurrence and then refines severity within a three-level Property Damage Extent (PDE) classification, followed by a conservative downgrade check for weakly supported over-severe outputs. In a Hurricane Harvey case study in Harris County, Texas, the supervised tabular baseline achieves 0.714 overall accuracy and 0.859 accuracy on…
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