In innovation analysis the logit model used to be applied on available data when the dependent variables are dichotomous. Since most of the economic variables are correlated between each other practitioners often meet the problem of multicollinearity. This paper introduces a shrinkage estimator for the logit model which is a generalization of the estimator proposed by Liu (1993) for the linear regression. This new estimation method is suggested since the mean squared error (MSE) of the commonly used maximum likelihood (ML) method becomes inflated when the explanatory variables of the regression model are highly correlated. Using MSE, the optimal value of the shrinkage parameter is derived and some methods of estimating it are proposed. It i...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...
This article is concerned with the parameter estimation in partly linear regression models when the ...
This study investigates some improved estimation techniques for systems of unrelated equations when ...
The logistic regression model is used when the response variables are dichotomous. In the presence o...
Multicollinearity in logistic regression affects the variance of the maximum likelihood estimator ne...
In this paper, an effort has been put to develop a model for estimating growth based on logit re-gre...
The ridge regression-type (Hoerl and Kennard, 1970) and Liu-type (Liu, 1993) estimators are consiste...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
Multiple linear interferences are a fundamental obstacle in many standard models. This problem appea...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
Statistical analysis of mobility tables has long played a pivotal role in com-parative stratificatio...
Multiple linear interferences are a fundamental obstacle in many standard models. This problem appea...
By releasing the unbiasedness condition, we often obtain more accurate estimators due to the bias-va...
A success of the currently implemented projects and measures is determined not only by the urgency a...
The density function of the stochastic shrinkage parameters of the operational Liu type estimator is...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...
This article is concerned with the parameter estimation in partly linear regression models when the ...
This study investigates some improved estimation techniques for systems of unrelated equations when ...
The logistic regression model is used when the response variables are dichotomous. In the presence o...
Multicollinearity in logistic regression affects the variance of the maximum likelihood estimator ne...
In this paper, an effort has been put to develop a model for estimating growth based on logit re-gre...
The ridge regression-type (Hoerl and Kennard, 1970) and Liu-type (Liu, 1993) estimators are consiste...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
Multiple linear interferences are a fundamental obstacle in many standard models. This problem appea...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
Statistical analysis of mobility tables has long played a pivotal role in com-parative stratificatio...
Multiple linear interferences are a fundamental obstacle in many standard models. This problem appea...
By releasing the unbiasedness condition, we often obtain more accurate estimators due to the bias-va...
A success of the currently implemented projects and measures is determined not only by the urgency a...
The density function of the stochastic shrinkage parameters of the operational Liu type estimator is...
In small samples, maximum likelihood (ML) estimates of logit model coefficients have substantial bia...
This article is concerned with the parameter estimation in partly linear regression models when the ...
This study investigates some improved estimation techniques for systems of unrelated equations when ...