This study investigates empirical methods of generating prediction intervals for WASDE forecasts of corn, soybean, and wheat prices over the 1980/81 through 2006/07 marketing years. Empirical methods use historical forecast errors to estimate forecast error distributions, which are then used to predict confidence limits of forecasts. Five procedures were used to estimate empirical confidence limits, including histograms, kernel density estimation, logistic distribution, quantile regression, and quantile regression with stocks-to-use ratios. The procedures were compared based on out-of-sample performance, where the first 15 observations (1980/81- 1994/95) were used to generate confidence limits for the 16th year (1995/96); the first 16 obser...
This study evaluates the accuracy of USDA interval forecasts for corn, soybean, and wheat prices usi...
This study examines the relationship between the futures price at the time of production/placement d...
This analysis evaluates the forecasting ability of the December corn futures contract and November s...
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...
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...
The USDA WASDE (World Agricultural Supply and Demand Estimates) price forecasts are published in the...
Being able to accurately predict basis is critical for making marketing and management decisions. Ba...
This research compares practical methods of forecasting basis, using current market information for ...
A simple method for the construction of empirical confidence intervals for time series forecasts is ...
This research compares practical methods of forecasting basis, using current market information for ...
This paper examines the accuracy of preharvest corn yield forecasts from crop-weather models for maj...
An approximate variance of forecast is derived based on the structural coefficients and the variance...
This study evaluates the accuracy of USDA interval forecasts for corn, soybean, and wheat prices usi...
This study examines the relationship between the futures price at the time of production/placement d...
This analysis evaluates the forecasting ability of the December corn futures contract and November s...
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...
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...
The USDA WASDE (World Agricultural Supply and Demand Estimates) price forecasts are published in the...
Being able to accurately predict basis is critical for making marketing and management decisions. Ba...
This research compares practical methods of forecasting basis, using current market information for ...
A simple method for the construction of empirical confidence intervals for time series forecasts is ...
This research compares practical methods of forecasting basis, using current market information for ...
This paper examines the accuracy of preharvest corn yield forecasts from crop-weather models for maj...
An approximate variance of forecast is derived based on the structural coefficients and the variance...
This study evaluates the accuracy of USDA interval forecasts for corn, soybean, and wheat prices usi...
This study examines the relationship between the futures price at the time of production/placement d...
This analysis evaluates the forecasting ability of the December corn futures contract and November s...