- Çukurova Üniversitesi Sosyal Bilimler Enstitüsü Dergisi
- Vol: 24 Issue: 2
- POVERTY RATE AND ITS DETERMINANTS FOR 12 STATISTICAL REGIONS OF TURKEY: GENERALIZED MAXIMUM ENTROPY ...
POVERTY RATE AND ITS DETERMINANTS FOR 12 STATISTICAL REGIONS OF TURKEY: GENERALIZED MAXIMUM ENTROPY APPROACH
Authors : Hüseyin Güler, Fikri Akdeniz, Hasan Altan Çabuk, Sibel Örk Özel
Pages : 337-348
View : 16 | Download : 7
Publication Date : 2015-10-31
Article Type : Research
Abstract :In this study, poverty rate of Turkey on 12 statistical regions (NUTS – 1 level) and some determinants of this rate is modeled by a linear regression model. Average household size, unemployment rate, high school and university enrollment rates, median income and urbanization rate as determinants of poverty rate are used as explanatory variables of this model. It is observed that the ordinary least squares (OLS) produce unstable estimates since the design matrix X is subject to strong multicollinearity. In order to obtain stabilized parameter estimates, two biased estimation methods known in the literature, namely Ridge regression and generalized maximum entropy (GME), are used. Inequality and sign constraints that are required in the context of economic theory are used for the GME estimator. Estimators are compared by their efficiency with the estimated mean squared error values obtained by the bootstrap method.Keywords : Generalized maximum entropy, Least squares, Ridge regression, Multicollinearity, Bootstrap