A typical model for geostatistical data when the observations are counts is the spatial generalised linear mixed model. We present a criterion for optimal sampling design under this framework which aims to minimise the error in the prediction of the underlying spatial random effects. The proposed criterion is derived by performing an asymptotic expansion to the conditional prediction variance. We argue that the mean of the spatial process needs to be taken into account in the construction of the predictive design, which we demonstrate through a simulation study where we compare the proposed criterion against the widely used space-filling design. Furthermore, our results are applied to the Norway precipitation data and the rhizoctonia diseas...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
Space-time monitoring and prediction of environmental variables requires measurements of the environ...
Space-time monitoring and prediction of environmental variables requires measurements of the environ...
We study spatial sampling design for prediction of stationary isotropic Gaussian processes with esti...
We study spatial sampling design for prediction of stationary isotropic Gaussian processes with esti...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
When statistical inference is used for spatial prediction, the model-based framework known as krigin...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
The problem of choosing spatial sampling designs for investigating an unobserved spatial phenomenon ...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
Space-time monitoring and prediction of environmental variables requires measurements of the environ...
Space-time monitoring and prediction of environmental variables requires measurements of the environ...
We study spatial sampling design for prediction of stationary isotropic Gaussian processes with esti...
We study spatial sampling design for prediction of stationary isotropic Gaussian processes with esti...
We use an expression for the error variance of geostatistical predictions, which includes the effect...
When statistical inference is used for spatial prediction, the model-based framework known as krigin...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...
Spatial statistics has traditionally used the spatial information available before sampling in order...