A False Sense of Security
The Impact of Forecast Accuracy on Hurricane DamagesAndrew Martinez (Doctoral Student, Research Assistant, Department of Economics, University of Oxford Institute for New Economic Thinking at the Martin School, University of Oxford)
Abstract:
I analyze damages from hurricane strikes on the United States since 1955. Using machine learning methods to select the most important drivers for damages, I show that large errors in a hurricane’s predicted landfall location result in higher damages. This relationship holds across a wide range of model specifications and when controlling for ex-ante uncertainty and potential endogeneity. Using a counterfactual exercise I find that the cumulative reduction in damages from forecast improvements since 1970 is about $82 billion, which exceeds the U.S. government’s spending on the forecasts and private willingness to pay for them.
Keywords: Adaptation, Model Selection, Natural Disasters, Uncertainty JEL classifications: C51, C52, Q51, Q54