We investigate the performance of the ordinary least squares (OLS)-, M-, MM-, and the Theil–Sen (TS)-estimator for crop yield data analysis in crop insurance applications using Monte Carlo simulations. More specifically, the performance is assessed with respect to trend estimation, prediction of future yield levels, and the estimation of expected indemnity payments. In agreement with earlier findings, other estimators are found to be superior to OLS in simple regression problems if yield distributions are outlier contaminated and heteroscedastic. While this conclusion is also valid for subsequent applications such as yield prediction and the estimation of expected indemnity payments, the difference between the considered estimators becomes ...
The identification of improved methods for characterizing crop yield densities has experienced a rec...
Many yield modeling approaches have been developed in attempts to provide accurate characterizations...
The development of methodologies for predicting crop yield, in real-time and in response to differen...
We investigate the performance of the ordinary least squares (OLS)-, M-, MM-, and the Theil–Sen (TS)...
The objective of this study is to evaluate the robust regression method when detrending the crop yie...
Using a Monte Carlo experiment, the performance of the ordinary least squares (OLS) and the MM-estim...
This research examined the appropriateness of a 2-parameter model for crop insurance premium ratemak...
Normal, gamma and beta distributions are applied to 609 crop yield histories of Ontario farmers to d...
Vita.In the linear regression model for regressing the mean yield of a crop (wheat) on predictor var...
Machine learning Has performed a essential position within the estimation of crop yield for both far...
The choice of the appropriate linear model before this can be used for planning and decision making,...
The identification of improved methods for characterizing crop yield densities has experienced a rec...
Agriculture is primarily responsible for increasing the state's economic contribution around the wor...
The objective of this study is to evaluate and model the yield risk associated with major agricultur...
Accurate estimates of farm-level crop yield probability density functions (PDF's) are crucial for st...
The identification of improved methods for characterizing crop yield densities has experienced a rec...
Many yield modeling approaches have been developed in attempts to provide accurate characterizations...
The development of methodologies for predicting crop yield, in real-time and in response to differen...
We investigate the performance of the ordinary least squares (OLS)-, M-, MM-, and the Theil–Sen (TS)...
The objective of this study is to evaluate the robust regression method when detrending the crop yie...
Using a Monte Carlo experiment, the performance of the ordinary least squares (OLS) and the MM-estim...
This research examined the appropriateness of a 2-parameter model for crop insurance premium ratemak...
Normal, gamma and beta distributions are applied to 609 crop yield histories of Ontario farmers to d...
Vita.In the linear regression model for regressing the mean yield of a crop (wheat) on predictor var...
Machine learning Has performed a essential position within the estimation of crop yield for both far...
The choice of the appropriate linear model before this can be used for planning and decision making,...
The identification of improved methods for characterizing crop yield densities has experienced a rec...
Agriculture is primarily responsible for increasing the state's economic contribution around the wor...
The objective of this study is to evaluate and model the yield risk associated with major agricultur...
Accurate estimates of farm-level crop yield probability density functions (PDF's) are crucial for st...
The identification of improved methods for characterizing crop yield densities has experienced a rec...
Many yield modeling approaches have been developed in attempts to provide accurate characterizations...
The development of methodologies for predicting crop yield, in real-time and in response to differen...