Title of article :
Small area estimation of mean price of habitation transaction using time-series and cross-sectional area-level models
Author/Authors :
Lu?s Nobre Pereira & Pedro Sim?es Coelho، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
In this paper, a newsmall domain estimator for area-level data is proposed. The proposed estimator is driven
by a real problem of estimating the mean price of habitation transaction at a regional level in a European
country, using data collected from a longitudinal survey conducted by a national statistical office. At the
desired level of inference, it is not possible to provide accurate direct estimates because the sample sizes
in these domains are very small. An area-level model with a heterogeneous covariance structure of random
effects assists the proposed combined estimator. This model is an extension of a model due to Fay and
Herriot [5], but it integrates information across domains and over several periods of time. In addition,
a modified method of estimation of variance components for time-series and cross-sectional area-level
models is proposed by including the design weights. A Monte Carlo simulation, based on real data, is
conducted to investigate the performance of the proposed estimators in comparison with other estimators
frequently used in small area estimation problems. In particular, we compare the performance of these
estimators with the estimator based on the Rao–Yu model [23]. The simulation study also accesses the
performance of the modified variance component estimators in comparison with the traditional ANOVA
method. Simulation results show that the estimators proposed perform better than the other estimators in
terms of both precision and bias.
Keywords :
Linear mixed models , empirical best linear unbiased predictor , estimation of variance components , estimation of mean price of habitation , chronological autocorrelation
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS