Small Area Estimation Techniques Based on Logistic Model to Estimate Unemployment Rate
  • 김영원
  • 최형아
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초록

For the Korean Economically Active Population Survey(EAPS), we consider the composite estimator based on logistic regression model to estimate the unemployment rate for small areas(Si/Gun). Also, small area estimation technique based on hierarchical generalized linear model is proposed to include the random effect which reflect the characteristic of the small areas. The proposed estimation techniques are applied to real domestic data which is from the Korean EAPS of Choongbuk. The MSE of these estimators are estimated by Jackknife method, and the efficiencies of small area estimators are evaluated by the RRMSE. As a result, the composite estimator based on logistic model is much more efficient than others and it turns out that the composite estimator can produce the reliable estimates under the current EAPS system.

키워드

composite estimatorhierarchical generalized linear modellogistic regression. unemployment ratecomposite estimatorhierarchical generalized linear modellogistic regression. unemployment rate
제목
Small Area Estimation Techniques Based on Logistic Model to Estimate Unemployment Rate
저자
김영원최형아
발행일
2004-12
저널명
Communications for Statistical Applications and Methods
11
3
페이지
583 ~ 595