Abstract In regression analysis, ridge estimators are often used to alleviate the problem of multicollinearity. Ridge estimators have traditionally been evaluated using the risk under quadratic loss criterion, which places sole emphasis on estimators' precision. Here, we consider the balanced loss function (A. Zellner, in: S.S. Gupta, J.O. Berger (Eds.), Statistical Decision Theory and Related Topics, vol. V, Springer, New York, 1994, p. 377) which incorporates a measure for the goodness of fit of the model as well as estimation precision. By adopting this loss we derive and numerically evaluate the risks of the feasible generalized ridge and the almost unbiased feasible generalized ridge estimators. We show that in the case of severe ...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...
<p><em>Ordinary least square is parameter estimation method for linier regression analysis by minimi...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...
In regression analysis, ridge regression estimators and Liu type estimators are often used to overco...
In regression analysis, ridge regression estimators and Liu type estimators are often used to overco...
In this paper, using the asymmetric LINEX loss function we derive and numerically evaluate the risk ...
ABSTRACTPresence of collinearity among the explanatory variables results in larger standard errors o...
We argue in this paper that general ridge (GR) regression implies no major complication compared wit...
A large number of ridge regression estimators have been proposed and used with little knowledge of t...
A large number of ridge regression estimators have been proposed and used with little knowledge of t...
In general ridge (GR) regression p ridge parameters have to be determined, whereas simple ridge regr...
It is known that collinearity among the explanatory variables in generalized linear models (GLMs) in...
Includes bibliographical references (pages 46-49)Ridge regression is an alternative to least\ud squa...
Investigators that seek to employ regression analysis usually encounter the problem of multicollinea...
Multicollinearity is a major problem in linear regression analysis and several methods exists in the...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...
<p><em>Ordinary least square is parameter estimation method for linier regression analysis by minimi...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...
In regression analysis, ridge regression estimators and Liu type estimators are often used to overco...
In regression analysis, ridge regression estimators and Liu type estimators are often used to overco...
In this paper, using the asymmetric LINEX loss function we derive and numerically evaluate the risk ...
ABSTRACTPresence of collinearity among the explanatory variables results in larger standard errors o...
We argue in this paper that general ridge (GR) regression implies no major complication compared wit...
A large number of ridge regression estimators have been proposed and used with little knowledge of t...
A large number of ridge regression estimators have been proposed and used with little knowledge of t...
In general ridge (GR) regression p ridge parameters have to be determined, whereas simple ridge regr...
It is known that collinearity among the explanatory variables in generalized linear models (GLMs) in...
Includes bibliographical references (pages 46-49)Ridge regression is an alternative to least\ud squa...
Investigators that seek to employ regression analysis usually encounter the problem of multicollinea...
Multicollinearity is a major problem in linear regression analysis and several methods exists in the...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...
<p><em>Ordinary least square is parameter estimation method for linier regression analysis by minimi...
In time series regression modelling, first-order autocorrelated errors are often a problem. When the...