Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive method for the estimation of unknown variance and covariance components. LS-VCE is simple because it is based on the well-known principle of LS; it is flexible because it works with a user-defined weight matrix; and it is attractive because it allows one to directly apply the existing body of knowledge of LS theory. In this contribution, we present the LS-VCE method for different scenarios and explore its various properties. The method is described for three classes of weight matrices: a general weight matrix, a weight matrix from the unit weight matrix class; and a weight matrix derived from the class of elliptically contoured distributions. We also c...
summary:A linear model with approximate variance components is considered. Differences among approxi...
summary:A linear model with approximate variance components is considered. Differences among approxi...
The purpose of this paper is to introduce some recent developments in variance component estimation ...
Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive method for...
Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive method for...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
Abstract Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive m...
The stochastic model of least squares adjustment plays an essential role in geodetic network data pr...
Variance component estimation (VCE) is used to update the stochastic model in least-squares adjustme...
This contribution can be seen as an attempt to apply a rigorous method for variance components in a ...
Variance components estimation originated with estimating error variance in analysis of variance by ...
AbstractFor n > 1 let X = (X1,…,Xn)′ have a mean vector θ1 and covariance matrix σ2Σ, where 1 = (1,…...
This work was partially supported by national funds of FCT - Foundation for Science and Technology u...
This paper has two di~?tinct parts. The first is a brief account of early work (1939-1953) on varian...
summary:A linear model with approximate variance components is considered. Differences among approxi...
summary:A linear model with approximate variance components is considered. Differences among approxi...
The purpose of this paper is to introduce some recent developments in variance component estimation ...
Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive method for...
Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive method for...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
Abstract Least-squares variance component estimation (LS-VCE) is a simple, flexible and attractive m...
The stochastic model of least squares adjustment plays an essential role in geodetic network data pr...
Variance component estimation (VCE) is used to update the stochastic model in least-squares adjustme...
This contribution can be seen as an attempt to apply a rigorous method for variance components in a ...
Variance components estimation originated with estimating error variance in analysis of variance by ...
AbstractFor n > 1 let X = (X1,…,Xn)′ have a mean vector θ1 and covariance matrix σ2Σ, where 1 = (1,…...
This work was partially supported by national funds of FCT - Foundation for Science and Technology u...
This paper has two di~?tinct parts. The first is a brief account of early work (1939-1953) on varian...
summary:A linear model with approximate variance components is considered. Differences among approxi...
summary:A linear model with approximate variance components is considered. Differences among approxi...
The purpose of this paper is to introduce some recent developments in variance component estimation ...