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Author
Żądło Tomasz (University of Economics in Katowice, Poland)
Title
On Asymmetry of Prediction Errors in Small Area Estimation
Source
Statistics in Transition, 2017, vol. 18, nr 3, s. 413-432, rys., tab., aneks, bibliogr. s. 429-430
Keyword
Statystyka małych obszarów, Badania reprezentacyjne
Small area estimates, Sampling survey
Note
summ.
Abstract
The mean squared error reflects only the average prediction accuracy while the distribution of squared prediction error is positively skewed. Hence, assessing or comparing accuracy based on the MSE (which is the mean of squared errors) is insufficient and even inadequate because we should be interested not only in the average but in the whole distribution of prediction errors. This is the reason why we propose to use different than MSE measures of prediction accuracy in small area estimation. In the prediction accuracy comparisons we take into account our proposal for the empirical best predictor, which is a generalization of the predictor presented by Molina and Rao (2010). The generalization results from the assumption of a longitudinal model and possible changes of the population and subpopulations in time. (original abstract)
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The Library of Warsaw School of Economics
The Library of University of Economics in Katowice
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ISSN
1234-7655
Language
eng
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