Project Overview

This project analyzes global natural disaster observations from the NASA EONET API, with a focus on category imbalance, temporal trends, seasonality, spatial concentration, and predictive benchmarking.

Main Research Question

How do global natural disaster observations in NASA EONET vary across category, time, seasonality, and space, and to what extent can these patterns support simple out-of-sample prediction?

Key Findings

Report Summary

The written report is structured as Introduction, Methods, Results, and Conclusions, and answers explicit research questions with quantitative evidence.

Research question addressed in the report

  • Main question: How do NASA EONET disaster observations vary by category, time, seasonality, and space, and how does predictive performance change between two targets (full multi-category counts vs wildfire-only counts)?
  • Supporting questions include: category dominance, temporal trend shape, category-specific seasonality, and out-of-sample benchmark performance.

Quantitative findings from the report

  • Category imbalance is extreme: Wildfires accounts for 89.1% of all observations.
  • Temporal counts peak in 2024 at 16,816; the surge is primarily wildfire-driven.
  • Scope comparison changes model ranking: full scope best RMSE = 324.258 (GAM), wildfire-only best RMSE = 571.294 (OLS).
  • Even with partial RMSE gains, out-of-sample R2 remains weak (negative in the report benchmarks), so predictive results are interpreted cautiously.

Explore More

Explore category composition, seasonality panels, map filters, and predictive benchmarking on the full interactive page.

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