Researchers are increasingly able to capture spatially referenced data on both a response and a covariate more frequently and in more detail. A combination of geostatisical models and analysis of covariance methods may be used to analyze such data. However, very basic questions regarding the effects of using a covariate whose support differs from that of the response variable must be addressed to utilize these methods most efficiently. In this experiment, a simulation study was conducted to assess the following: (i) the gain in efficiency when geostatistical models are used, (ii) the gain in efficiency when analysis of covariance methods are used, and (iii) the effects of including a covariate whose support differs from that of the response...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
This study derived the equations for computing the spatial variability in the aggregation of origina...
In this simulation study, parametric bootstrap methods are introduced to test for spatial non-statio...
Researchers are increasingly able to capture spatially referenced data on both a response and a cova...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
Methodology for precision agriculture is, perhaps, too focused on methods that allow for spatial cor...
Regressions such as Grain yield=f(soil,landscape) are frequently reported in precision agriculture r...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
In this simulation study, regressions specified with autocorrelation effects are compared against th...
Spatial correlation and non-normality in agricultural, geological, or environmental settings can hav...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
Spatial models are used in a variety of research areas, such as environmental sciences, epidemiology...
An area of increasing interest to agricultural and ecological researchers is the analysis of spatial...
Four types of covariates are used to account for spatial variability in data from a field experiment...
If covariate and spatial effects are modeled at the same time in order to cover spatial autocorrelat...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
This study derived the equations for computing the spatial variability in the aggregation of origina...
In this simulation study, parametric bootstrap methods are introduced to test for spatial non-statio...
Researchers are increasingly able to capture spatially referenced data on both a response and a cova...
Inherent to a spatial variable is the unit of support at which it is measured. In many studies, vari...
Methodology for precision agriculture is, perhaps, too focused on methods that allow for spatial cor...
Regressions such as Grain yield=f(soil,landscape) are frequently reported in precision agriculture r...
This dissertation consists of three papers written on the design and analysis of experiments in the ...
In this simulation study, regressions specified with autocorrelation effects are compared against th...
Spatial correlation and non-normality in agricultural, geological, or environmental settings can hav...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
Spatial models are used in a variety of research areas, such as environmental sciences, epidemiology...
An area of increasing interest to agricultural and ecological researchers is the analysis of spatial...
Four types of covariates are used to account for spatial variability in data from a field experiment...
If covariate and spatial effects are modeled at the same time in order to cover spatial autocorrelat...
Three approaches to modelling spatial data in which simulation plays a vital role are described and ...
This study derived the equations for computing the spatial variability in the aggregation of origina...
In this simulation study, parametric bootstrap methods are introduced to test for spatial non-statio...