This paper discusses the problem of determining optimal designs for regression models, when the observations are dependent and taken on an interval. A complete solution of this challenging optimal design problem is given for a broad class of regression models and covariance kernels. We propose a class of estimators which are only slightly more complicated than the ordinary least-squares estimators. We then demonstrate that we can design the experiments, such that asymptotically the new estimators achieve the same precision as the best linear unbiased estimator computed for the whole trajectory of the process. As a by-product, we derive explicit expressions for the BLUE in the continuous time model and analytic expressions for the optimal de...
In the common linear regression model the problem of determining op-timal designs for least squares ...
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...
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 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...
In the common linear regression model the problem of determining optimal designs for least squares e...
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...
We consider the problem of construction of optimal experimental designs for linear regression models...
The present article is a draft of a chapter in the Handbook of Design and Analysis of Experiments an...
We consider the problem of designing experiments for regression in the presence of correlated observ...
In the common linear and quadratic regression model with an autoregressive error structure exact D-o...
In the common linear regression model the problem of determining op-timal designs for least squares ...
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...
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 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...
In the common linear regression model the problem of determining optimal designs for least squares e...
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...
We consider the problem of construction of optimal experimental designs for linear regression models...
The present article is a draft of a chapter in the Handbook of Design and Analysis of Experiments an...
We consider the problem of designing experiments for regression in the presence of correlated observ...
In the common linear and quadratic regression model with an autoregressive error structure exact D-o...
In the common linear regression model the problem of determining op-timal designs for least squares ...
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...