This paper presents a new and efficient method for the construction of optimal designs for regression models with dependent error processes. In contrast to most of the work in this field, which starts with a model for a finite number of observations and considers the asymptotic properties of estimators and designs as the sample size converges to infinity, our approach is based on a continuous time model. We use results from stochastic anal- ysis to identify the best linear unbiased estimator (BLUE) in this model. Based on the BLUE, we construct an efficient linear estimator and corresponding optimal designs in the model for finite sample size by minimizing the mean squared error between the opti- mal solution in the continuous time model an...
In the common linear and quadratic regression model with an autoregressive error structure exact D-o...
We consider the problem of construction of optimal experimental designs for linear regression models...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and effcient method for the construction of optimal designs for regressio...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
We consider the problem of designing experiments for regression in the presence of correlated observ...
We consider the problem of designing experiments for regression in the presence of correlated observ...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
In the common linear regression model the problem of determining optimal designs for least squares e...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and ...
In the common linear and quadratic regression model with an autoregressive error structure exact D-o...
We consider the problem of construction of optimal experimental designs for linear regression models...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and efficient method for the construction of optimal designs for regressio...
This paper presents a new and effcient method for the construction of optimal designs for regressio...
This paper discusses the problem of determining optimal designs for regression models, when the obse...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
We consider the problem of designing experiments for regression in the presence of correlated observ...
We consider the problem of designing experiments for regression in the presence of correlated observ...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and a...
In the common linear regression model the problem of determining optimal designs for least squares e...
In the one-parameter regression model with AR(1) and AR(2) errors we find explicit expressions and ...
In the common linear and quadratic regression model with an autoregressive error structure exact D-o...
We consider the problem of construction of optimal experimental designs for linear regression models...
We consider the problem of constructing optimal designs for population pharmacokinetics which use ra...