This work considers the problem of constructing prediction intervals in log-Gaussian random fields. New prediction intervals are derived that are shorter than the standard prediction intervals of common use, where the reductions in length can be substantial in some situations. We consider both the case when the covariance parameters are known and unknown. For the latter case we propose a bootstrap calibration method to obtain prediction intervals with better coverage properties than the plug-in (estimative) prediction intervals. The methodology is illustrated using a spatial dataset consisting of cadmium concentrations from a potentially contaminated region in Switzerland.
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
[[abstract]]Log-normal linear models are widely applied, and in many situations one is interested in...
We tackle the problem of building a prediction interval in heteroscedastic Gaussian regression. We f...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
We propose bootstrap prediction intervals for an observation h periods into the future and its condi...
Methods of improving the coverage of Box–Jenkins prediction intervals for linear autoregressive mode...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usi...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
This paper investigates one-step-ahead prediction intervals for normal and non-normal variables. We ...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value a...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value ...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
[[abstract]]Log-normal linear models are widely applied, and in many situations one is interested in...
We tackle the problem of building a prediction interval in heteroscedastic Gaussian regression. We f...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
We propose bootstrap prediction intervals for an observation h periods into the future and its condi...
Methods of improving the coverage of Box–Jenkins prediction intervals for linear autoregressive mode...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usi...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
This paper investigates one-step-ahead prediction intervals for normal and non-normal variables. We ...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value a...
We construct bootstrap prediction intervals for linear autoregressions, nonlinear autoregressions, n...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper, we propose a new bootstrap procedure to obtain prediction intervals of future Value ...
Prediction intervals in State Space models can be obtained by assuming Gaussian innovations and usin...
[[abstract]]Log-normal linear models are widely applied, and in many situations one is interested in...
We tackle the problem of building a prediction interval in heteroscedastic Gaussian regression. We f...