On Misspecification of Spatial Weight Matrix for Small Area Estimation in Longitudinal Analysis

Authors

  • Tomasz Żądło University of Economics in Katowice

DOI:

https://doi.org/10.2478/v10103-012-0043-5

Abstract

The problem of prediction of subpopulation (domain) total is studied as in Rao (2003). Considerations are based on spatially correlated longitudinal data. The domain of interest can be defined after sample selection what implies its random sample size. The special case of the General Linear Mixed Model is proposed where two random components obey assumptions of spatial and temporal moving average process respectively. Moreover, it is assumed that the population may change in time and elements’ affiliations to subpopulation may change in time as well. The proposed model is a generalization of longitudinal models studied by e.g. Verbeke, Molenberghs (2000) and Hedeker, Gibbons (2006). The best linear unbiased predictor (BLUP) is derived. It may be used even if the sample size in the subpopulation of interest in the period of interest is zero. In the Monte Carlo simulation study the accuracy of the empirical version of the BLUP will be studied in the case of correct and incorrect specification of the spatial weight matrix. Two cases of model misspecification are studied. In the first case the misspecified spatial weight is used. In the second case independence of random components is assumed but the variable which is used to compute elements of spatial weight matrix in the correct case will be used as auxiliary variable in the model.

Downloads

Download data is not yet available.

References

Hedeker D., Gibbons R.D. (2006), Longitudinal Data Analysis, John Wiley, New Jersey
Google Scholar

R Development Core Team (2011), A language and environment for statistical computing, R Foundation for Statistical Computing, Vienna
Google Scholar

Rao J.N.K (2003), Small area estimation, John Wiley and Sons, New Jersey
Google Scholar

Royall R.M. (1976), The linear least squares prediction approach to two-stage Sampling, Journal of the American Statistical Association, 71, 657-473
Google Scholar

Verbeke G., Molenberghs G. (2000), Linear Mixed Models for Longitudinal Data, Springer-Verlag, New York
Google Scholar

Żądło T. (2004), On unbiasedness of some EBLU predictor, [in:] J. Antoch (ed.), Proceedings in Computational Statistics, Physica-Verlag, Heidelberg-New York, 2019-2026
Google Scholar

Żądło T. (2009), On prediction of domain totals based on unbalanced longitudinal data, [in:] Wywiał J., Żądło T. (eds.) Survey Sampling in Economic and Social Research, University of Economic in Katowice, Katowice
Google Scholar

Żądło T. (2011), On accuracy of two predictors for spatially and temporally correlated longitudinal data, submitted to publication
Google Scholar

Downloads

Published

2013-03-08

How to Cite

Żądło, T. (2013). On Misspecification of Spatial Weight Matrix for Small Area Estimation in Longitudinal Analysis. Comparative Economic Research. Central and Eastern Europe, 15(4), 305–318. https://doi.org/10.2478/v10103-012-0043-5

Issue

Section

Articles