Weighted Modified First Order Regression Procedures for Estimation in Linear Models with Missing X-Observations
ثبت نشده
چکیده
This paper considers the estimation of coe cients in a linear regression model with missing obser vations in the independent variables and introduces a modi cation of the standard rst order regression method for imputation of missing values The modi cation provides stochastic values for imputation and as an extension makes use of the principle of weighted mixed regression The proposed proce dures are compared with two popular procedures one which utilizes only the complete observations and the other which employs the standard rst order regression imputation method for missing values A simulation experiment to evaluate the gain in e ciency and to examine interesting issues like the impact of varying degree of multicollinearity in explanatory variables is proceeded Some work on the case of discrete regressor variables is in progress and will be reported in a future article to follow
منابع مشابه
Weighted Modiied First Order Regression Procedures for Estimation in Linear Models with Missing X-observations
This paper considers the estimation of coeecients in a linear regression model with missing observations in the independent variables and introduces a modiication of the standard rst order regression method for imputation of missing values. The modiication provides stochastic values for imputation and, as an extension, makes use of the principle of weighted mixed regression. The proposed proced...
متن کاملEstimation of Parameters in Multiple Regression With Missing X-Observations using Modified First Order Regression Procedure
This paper considers the estimation of coe cients in a linear regression model with missing observations in the independent variables and intro duces a modi cation of the standard rst order regression method for imputation of missing values The modi cation provides stochastic values for imputation Asymptotic properties of the estimators for the regression coe cients arising from the proposed mo...
متن کاملA matrix method for estimating linear regression coefficients based on fuzzy numbers
In this paper, a new method for estimating the linear regression coefficients approximation is presented based on Z-numbers. In this model, observations are real numbers, regression coefficients and dependent variables (y) have values for Z-numbers. To estimate the coefficients of this model, we first convert the linear regression model based on Z-numbers into two fuzzy linear regression mode...
متن کاملNew Approach in Fitting Linear Regression Models with the Aim of Improving Accuracy and Power
The main contribution of this work lies in challenging the common practice of inferential statistics in the realm of simple linear regression for attaining a higher degree of accuracy when multiple observations are available, at least, at one level of the regressor variable. We derive sufficient conditions under which one can improve the accuracy of the interval estimations at quite affordable ...
متن کاملDurbin-watson Tests for Serial Correlation in Regressions with Missing Observations*
We study two Durbin-Watson type tests for serial correlation of errors in regression models when observations are missing. We derive them by applying standard methods used in time series and linear models to deal with missing observations. The first test may be viewed as a regular Durbin-Watson test in the context of an extended model. We discuss appropriate adjustments that allow one to use al...
متن کامل