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Modelling Group Heterogeneity for Small Area Estimation Using M-Quantiles

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posted on 2024-11-15, 09:24 authored by James Dawber, Raymond ChambersRaymond Chambers
Small area estimation typically requires model-based methods that depend on isolating the contribution to overall population heterogeneity associated with group (i.e. small area) membership. One way of doing this is via random effects models with latent group effects. Alternatively, one can use an M-quantile ensemble model that assigns indices to sampled individuals characterising their contribution to overall sample heterogeneity. These indices are then aggregated to form group effects. The aim of this article is to contrast these two approaches to characterising group effects and to illustrate them in the context of small area estimation. In doing so, we consider a range of different data types, including continuous data, count data and binary response data.

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Citation

Dawber, J. & Chambers, R. (2018). Modelling Group Heterogeneity for Small Area Estimation Using M-Quantiles. International Statistical Review, Online First 1-14.

Journal title

International Statistical Review

Volume

87

Issue

S1

Pagination

S50-S63

Language

English

RIS ID

130326

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