This paper explores the use of quantile regression for estimation of empirical confidence limits for WASDE forecasts of corn, soybean, and wheat prices. Quantile regressions for corn, soybean, and wheat forecast errors over 1980/81 through 2006/07 were specified as a function of forecast lead time. Estimated coefficients were used to calculate forecast intervals for 2007/08. The quantile regression approach to calculating forecast intervals was evaluated based on out-of-sample performance. The accuracy of the empirical confidence intervals was not statistically different from the target level about 87% of the time prior to harvest and 91% of the time after harvest
A simple method for the construction of empirical confidence intervals for time series forecasts is ...
A widely used approach to evaluating volatility forecasts uses a regression framework which measures...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This study investigates empirical methods of generating prediction intervals for WASDE forecasts of ...
Conventional procedures for calculating confidence limits of forecasts generated by statistical mode...
This study suggests that confidence intervals for WASDE forecasts of corn, soybean, and wheat prices...
Across disciplines, researchers are often interested in gaining a deeper understanding of trends in ...
The USDA WASDE (World Agricultural Supply and Demand Estimates) price forecasts are published in the...
Exponential smoothing methods do not involve a formal procedure for identifying the underlying data ...
An approximate variance of forecast is derived based on the structural coefficients and the variance...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
A simple method for the construction of empirical confidence intervals for time series forecasts is ...
A widely used approach to evaluating volatility forecasts uses a regression framework which measures...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This study investigates empirical methods of generating prediction intervals for WASDE forecasts of ...
Conventional procedures for calculating confidence limits of forecasts generated by statistical mode...
This study suggests that confidence intervals for WASDE forecasts of corn, soybean, and wheat prices...
Across disciplines, researchers are often interested in gaining a deeper understanding of trends in ...
The USDA WASDE (World Agricultural Supply and Demand Estimates) price forecasts are published in the...
Exponential smoothing methods do not involve a formal procedure for identifying the underlying data ...
An approximate variance of forecast is derived based on the structural coefficients and the variance...
We describe and compare methods for constructing confidence intervals for quantile regression coeffi...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
A simple method for the construction of empirical confidence intervals for time series forecasts is ...
A widely used approach to evaluating volatility forecasts uses a regression framework which measures...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...