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Small Area Estimation Under Transformation To Linearity

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posted on 2024-11-15, 23:58 authored by Hukum Chandra, Raymond ChambersRaymond Chambers
Small area estimation based on linear mixed models can be inefficient when the underlying relationships are non-linear. In this paper we introduce SAE techniques for variables that can be modelled linearly following a non-linear transformation. In particular, we extend the model-based direct estimator of Chandra and Chambers (2005) to data that are consistent with a linear mixed model in the logarithmic scale, using model calibration to define appropriate weights for use in this estimator. Our results show that the resulting transformation-based estimator is both efficient and robust with respect to the distribution of the random effects in the model. An application to business survey data demonstrates the satisfactory performance of the method.

History

Article/chapter number

10-08

Total pages

29

Language

English

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