AbstractThe least squares (LS) estimator seems the natural estimator of the coefficients of a Gaussian linear regression model. However, if the dimension of the vector of coefficients is greater than 2 and the residuals are independent and identically distributed, this conventional estimator is not admissible. James and Stein [Estimation with quadratic loss, Proceedings of the Fourth Berkely Symposium vol. 1, 1961, pp. 361–379] proposed a shrinkage estimator (James–Stein estimator) which improves the least squares estimator with respect to the mean squares error loss function. In this paper, we investigate the mean squares error of the James–Stein (JS) estimator for the regression coefficients when the residuals are generated from a Gaussia...
The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbanc...
In this paper we present a very brief description of least mean square algorithm with applications i...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...
AbstractThe least squares (LS) estimator seems the natural estimator of the coefficients of a Gaussi...
We study some problems of the parameter inference which are in connection with wide sense stationary...
Gaussian Process Regression is a non parametric approach for estimating relationships in data sets. ...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
In problems concerning time series, it is often the case that the distur- bances are, in fact, corre...
The problem of estimating the coefficients in a linear regression model is considered when some of t...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
The effect of variance estimation of regression coefficients when disturbances are serially correlat...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractIn this paper we propose James–Stein type estimators for variances raised to a fixed power b...
In the Gauss-Markov regression model, one can always update the least square estimate of the slope v...
The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbanc...
In this paper we present a very brief description of least mean square algorithm with applications i...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...
AbstractThe least squares (LS) estimator seems the natural estimator of the coefficients of a Gaussi...
We study some problems of the parameter inference which are in connection with wide sense stationary...
Gaussian Process Regression is a non parametric approach for estimating relationships in data sets. ...
This work develops adaptive estimators for a linear regression model with serially correlated errors...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
In problems concerning time series, it is often the case that the distur- bances are, in fact, corre...
The problem of estimating the coefficients in a linear regression model is considered when some of t...
Assuming that the errors of an autoregressive process form a sequence of martingale differences, the...
The effect of variance estimation of regression coefficients when disturbances are serially correlat...
AbstractThis paper establishes the consistency and the root-n asymptotic normality of the exact maxi...
AbstractIn this paper we propose James–Stein type estimators for variances raised to a fixed power b...
In the Gauss-Markov regression model, one can always update the least square estimate of the slope v...
The ordinary least squares (OLS) estimates in the regression model are efficient when the disturbanc...
In this paper we present a very brief description of least mean square algorithm with applications i...
AbstractThe least squares residuals from the standard linear model have a variance matrix which is a...