M.A. Ali
Yarmouk University
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Featured researches published by M.A. Ali.
Communications in Statistics-theory and Methods | 1991
M.A. Ali
Iheil and Goldberger (1961) and Theil (1963) founded the mixed regression approach, Their mixed regression estimator is essentially a large class of estimators that includes ridge, generalized ridge and shrinkage estimators, Properties of these estimators when data contain outliers have not been examined extensively. The present investigation shows that the mixed regression estimator, when observationsare subject to shift in means and variances, is uniformly superior, in terms of squared bias and variance, to the least squares estimator.
Communications in Statistics-theory and Methods | 1990
M.A. Ali
In this article Lindleys (1956) measure of average information is used to measure the loss of information due to the unavailability of a set of observations in an experiment. This measure of loss of information may be used to detect a set of most informative observations in a given design.
Communications in Statistics-theory and Methods | 1989
M.A. Ali
This paper studies a class of shrinkage estimators of the vector of regression coefficients. The small disturbance approximations for the bias and the mean squared error matrix of the estimator are derived. In the sense of mean squared error, these estimators dominate the least squares estimator and the generalized Stein estimator developed by Hosmane (1988).
Communications in Statistics-theory and Methods | 1988
M.A. Ali; M.S. Abu-Salih; S.K. Titi
Kupper and Meydrech and Myers and Lahoda introduced the mean squared error (MSE) approach to study response surface designs, Duncan and DeGroot derived a criterion for optimality of linear experimental designs based on minimum mean squared error. However, minimization of the MSE of an estimator maxr renuire some knowledge about the unknown parameters. Without such knowledge construction of designs optimal in the sense of MSE may not be possible. In this article a simple method of selecting the levels of regressor variables suitable for estimating some functions of the parameters of a lognormal regression model is developed using a criterion for optimality based on the variance of an estimator. For some special parametric functions, the criterion used here is equivalent to the criterion of minimizing the mean squared error. It is found that the maximum likelihood estimators of a class of parametric functions can be improved substantially (in the sense of MSE) by proper choice of the values of regressor var...
Communications in Statistics-theory and Methods | 1992
M.A. Ali; M. Masoom Ali
In this article, impacts of correlated observations on multicollinearity are examined. It is found that positively equi-correlated observations alleviate the problem of multicollinearity. Negatively correlated observations turn the problem from bad to worse. Circumstances under which the best linear unbiased estimator (BLUE) based on positively equi-correlated observations is superior to the BLUE based on independent observations are identified.
Communications in Statistics-theory and Methods | 1989
M.A. Ali
In this article Bocks (1975) approach is used to fit a class of lower order polynomials to a higher order response function. For a wide class of conditions our fitted models offer greater protection, in some sense, against model inadequacies than the one fitted by Karson, Manson and Hader (1969). However, our approach is applicable to the situations where the assumption of normality about the distribution of the response variable is appropriate.
Communications in Statistics-theory and Methods | 1991
M.A. Ali
In this article a class of restricted minimum bias linear estimators of the vector of unknown regression coefficients when multicollinearity among the columns of the design matrix exists, is obtained. The ordinary ridge regression, principal components and shrinkage estimators are members of this class. Moreover, our ap-proach can be used to improve, in some sense, certain classes of generalized ridge and shrinkage estimators of the vector of un-known parameters in linear models.
Communications in Statistics-theory and Methods | 1990
M.A. Ali
In this article optimality of experimental design for fitting a lower-order polynomial to a higher order response function for the situation in which observations may be subject to shift in means as well as in variances is considered. It is found that Karson, Manson and Hader‘s (1969) optimum designs provide pro-tection, in some sense, against model inadequacies even when observations are subject to shift in means and variances.
Renewable & Sustainable Energy Reviews | 2017
Goudarzi Hossein; M.A. Ali
Renewable & Sustainable Energy Reviews | 2017
Minaeian Ali; Sedaghat Ahmad; M.A. Ali; Akbar Alemrajabi Ali