The prediction of spatially and/or temporal varying variates based on observations of these variates at some locations in space and/or instances in time, is an important topic in the various spatial and Earth sciences disciplines. This topic has been extensively studied, albeit under different names. The underlying model used is often of the trend-signal-noise type. This model is quite general and it encompasses many of the conceivable measurements. However, the methods of prediction based on these models have only been developed for the case the trend parameters are real-valued. In the present contribution we generalize the theory of least-squares prediction by permitting some or all of the trend parameters to be integer valued. We derive ...
[[abstract]]A major difficulty in applying a measurement error model is that one is required to have...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
The prediction of spatially and/or temporal varying variates based on observations of these variates...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
The different wavelength components of the anomalous gravity field were treated as trend, si...
In this paper we consider the problem of generating multi-period predictions from two simple dynamic...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
Power law or generalized polynomial regressions with unknown real-valued exponents and coefficients,...
Following estimation of effects from a linear mixed model, it is often useful to form predicted valu...
[[abstract]]Assume that observations are generated from the first-order autoregressive (AR) model wi...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
A major difficulty in applying a measurement error model is that one is required to have additional ...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
[[abstract]]A major difficulty in applying a measurement error model is that one is required to have...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
The prediction of spatially and/or temporal varying variates based on observations of these variates...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
The different wavelength components of the anomalous gravity field were treated as trend, si...
In this paper we consider the problem of generating multi-period predictions from two simple dynamic...
Abstract: This paper considers prediction intervals for a future observation in the context of mixed...
Power law or generalized polynomial regressions with unknown real-valued exponents and coefficients,...
Following estimation of effects from a linear mixed model, it is often useful to form predicted valu...
[[abstract]]Assume that observations are generated from the first-order autoregressive (AR) model wi...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
A major difficulty in applying a measurement error model is that one is required to have additional ...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
We consider the problem of predicting values of a random process or field satisfying a linear model ...
[[abstract]]A major difficulty in applying a measurement error model is that one is required to have...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
We consider the problem of predicting values of a random process or field satisfying a linear model ...