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Adaptive Inference for Multi-Stage Survey Data
Authors:Loai Mahmoud Al-Zou'bi  Robert Graham Clark  David G Steel
Institution:1. Center for Statistical and Survey Methodology, School of Mathematics and Applied Statistics , University of Wollongong , New South Wales , Australia lmaa515@uow.edu.au;3. Center for Statistical and Survey Methodology, School of Mathematics and Applied Statistics , University of Wollongong , New South Wales , Australia
Abstract:Multi-level models can be used to account for clustering in data from multi-stage surveys. In some cases, the intraclass correlation may be close to zero, so that it may seem reasonable to ignore clustering and fit a single-level model. This article proposes several adaptive strategies for allowing for clustering in regression analysis of multi-stage survey data. The approach is based on testing whether the PSU-level variance component is zero. If this hypothesis is retained, then variance estimates are calculated ignoring clustering; otherwise, clustering is reflected in variance estimation. A simple simulation study is used to evaluate the various procedures.
Keywords:Adaptive estimation  Cluster sampling  Huber–White variance estimator  Multi-level models  Variance components
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