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Nonparametric Estimation of Crop Insurance Rates Revisited
169
Citations
13
References
2000
Year
Econometric ModelEconomicsInsurance RatesEngineeringDensity EstimationAgricultural EconomicsBusinessEconometricsEconomic AnalysisConditional Yield DensitiesBayesian MethodsStatistical InferenceNew MethodologyEconometric MethodYield PredictionNonparametric EstimationStatisticsSemi-nonparametric Estimation
Abstract With the crop insurance program becoming the cornerstone of U.S. agricultural policy, recovering accurate rates is of paramount interest. Lack of yield data presents, by far, the most fundamental obstacle to recovery of accurate rates. This article employs new methodology to estimate conditional yield densities and derive the insurance rates. In our application, we find the nonparametric kernel density estimator requires an additional twenty‐six years of yield data to estimate the shape of the conditional yield densities as accurately as the recently developed empirical Bayes nonparametric kernel density estimator. Such methodological improvements can significantly aid in ameliorating the data problem.
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