[[abstract]]© 1998 Institute of Electrical and Electronics Engineers-In statistical estimation theory, a satisfactory estimator should be able to embody a large portion of the available information, which may be known a priori or provided by the data. Hence, the loss of information is minimum when this estimator is employed. In previous work, an estimator criterion based on the discrepancy between the estimator's error covariance and its information lower bound was proposed. Conceptually, this criterion is a measure of the loss of information carried by a parameter estimator based on the Bayesian approach. A minimum discrepancy estimator (MDE) was derived under the linearity assumption. It was, however, pointed out that the minimal inf...
An important statistical application is the problem of determining an appropriate set of input varia...
Abstract—We analyze the relationship between a Minimum Description Length (MDL) estimator (posterior...
In this paper, we investigate the relationship between the location of an optimal estimator of a ran...
[[abstract]]A new estimation criterion based on the discrepancy between the estimator's error covari...
A lower bound on the minimum mean-squared error (MSE) in a Bayesian estimation problem is proposed i...
A lower bound on the minimum mean-squared error (MSE) in a Bayesian estimation problem is proposed i...
With the help of certain inequalities concerning the elements of the dispersion matrix of a set of s...
Abstract The paper suggests an approximation of Bayesian parameter estimation for the case that data...
In the M-estimation theory developed by Huber (1964, Ann. Math. Statist.43, 1449-1458), the paramete...
AbstractIn the M-estimation theory developed by Huber (1964, Ann. Math. Statist.43, 1449–1458), the ...
The minimum discrimination information (MDI) procedure for lowering the mean squared error (MSE) of ...
The earliest method of estimation of statistical parameters is the method of least squares due to Ma...
Abstract — In this paper we develop a new upper bound for the mean square estimation error of a para...
Let fnλ be the regularised solution of a general, linear operator equation, K f0 = g, from discrete,...
This dissertation deals with the derivation of the standard errors of the coefficients in a discrimi...
An important statistical application is the problem of determining an appropriate set of input varia...
Abstract—We analyze the relationship between a Minimum Description Length (MDL) estimator (posterior...
In this paper, we investigate the relationship between the location of an optimal estimator of a ran...
[[abstract]]A new estimation criterion based on the discrepancy between the estimator's error covari...
A lower bound on the minimum mean-squared error (MSE) in a Bayesian estimation problem is proposed i...
A lower bound on the minimum mean-squared error (MSE) in a Bayesian estimation problem is proposed i...
With the help of certain inequalities concerning the elements of the dispersion matrix of a set of s...
Abstract The paper suggests an approximation of Bayesian parameter estimation for the case that data...
In the M-estimation theory developed by Huber (1964, Ann. Math. Statist.43, 1449-1458), the paramete...
AbstractIn the M-estimation theory developed by Huber (1964, Ann. Math. Statist.43, 1449–1458), the ...
The minimum discrimination information (MDI) procedure for lowering the mean squared error (MSE) of ...
The earliest method of estimation of statistical parameters is the method of least squares due to Ma...
Abstract — In this paper we develop a new upper bound for the mean square estimation error of a para...
Let fnλ be the regularised solution of a general, linear operator equation, K f0 = g, from discrete,...
This dissertation deals with the derivation of the standard errors of the coefficients in a discrimi...
An important statistical application is the problem of determining an appropriate set of input varia...
Abstract—We analyze the relationship between a Minimum Description Length (MDL) estimator (posterior...
In this paper, we investigate the relationship between the location of an optimal estimator of a ran...