Please use this identifier to cite or link to this item: http://repository.ipb.ac.id/handle/123456789/59474
Title: Small area estimation with time and area effects using a dynamic linear model
Other Titles: The 3rd International Conference on Mathematics and Statistics (ICoMS-3) Institut Pertanian Bogor, Indonesia, 5-6 August 2008
Authors: Sadik, Kusman
Notodiputro, Khairil Anwar
Keywords: dynamic linear model
direct estimation
indirect estimation
small area estimation (SAE)
general linear mixed model (GLMM)
empirical best linear unbiased prediction (EBLUP)
block diagonal covariance
Kalman filter
state space model
Issue Date: 2008
Publisher: Bogor Agricultural University
Abstract: Abstract. There is a growing demand for reliable small area statistics in order to asses or to put into policies and programs. Sample survey data provide effective reliable estimators of totals and means for large area and domains. But it is recognized that the usual direct survey estimator performing statistics for a small area, have unacceptably large standard errors, due to the circumtance of small sample size in the area. In fact, sample sizes in small areas are reduced, due to the circumtance that the overall sample size in a survey is usually determined to provide specific accuracy at a macro area level of aggregation, that is national territories, regions and so on. The most commonly used models for this case, usually in small area estimation, are based on generalized linear mixed models (GLMM). Some time happened that some surveys are carried out periodically so that the estimation could be improved by incorporating both the area and time random effects. In this paper we propose a state space model which accounts for the two random effects and is based on two equation, namely transition equation and measurement equation.
URI: http://repository.ipb.ac.id/handle/123456789/59474
ISBN: 987-979-19256-0-0
Appears in Collections:Proceedings



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