Empirical likelihood inference for regression parameters when modelling hierarchical complex survey data
Empirical likelihood inference for regression parameters when modelling hierarchical complex survey data
The data used in social, behavioural, health or biological sciences may have a hierarchical structure due to the natural structure in the population of interest or due to the sampling design. Multilevel or marginal models are often used to analyse such hierarchical data. The data may include sample units selected with unequal probabilities from a clustered and stratified population. Inferences for the regression coefficients may be invalid when the sampling design is informative. We apply a profile empirical likelihood approach to the regression parameters, which are defined as the solutions of a generalised estimating equation. The effect of the sampling design is taken into account. This approach can be used for point estimation, hypothesis testing and confidence intervals for the subvector of parameters. It asymptotically provides valid inference for the finite population parameters under a set of regularity conditions. We consider a two–stage sampling design, where the first stage units may be selected with unequal probabilities. We assume that the model and sampling hierarchies are the same. We treat the first stage sampling units as the unit of interest, by using an ultimate cluster approach. The estimating functions are defined at the ultimate cluster level of the hierarchy.
Oguz Alper, Melike
02d5ed8a-e9e3-438a-95c0-709acd83a5f8
Berger, Yves
8fd6af5c-31e6-4130-8b53-90910bf2f43b
4 August 2016
Oguz Alper, Melike
02d5ed8a-e9e3-438a-95c0-709acd83a5f8
Berger, Yves
8fd6af5c-31e6-4130-8b53-90910bf2f43b
Oguz Alper, Melike and Berger, Yves
(2016)
Empirical likelihood inference for regression parameters when modelling hierarchical complex survey data.
Proceedings of the Survey Research Methods Section, ASA, 2016: Survey Research Methods Section, , Chicago, United States.
29 Jul - 04 Aug 2016.
9 pp
.
Record type:
Conference or Workshop Item
(Paper)
Abstract
The data used in social, behavioural, health or biological sciences may have a hierarchical structure due to the natural structure in the population of interest or due to the sampling design. Multilevel or marginal models are often used to analyse such hierarchical data. The data may include sample units selected with unequal probabilities from a clustered and stratified population. Inferences for the regression coefficients may be invalid when the sampling design is informative. We apply a profile empirical likelihood approach to the regression parameters, which are defined as the solutions of a generalised estimating equation. The effect of the sampling design is taken into account. This approach can be used for point estimation, hypothesis testing and confidence intervals for the subvector of parameters. It asymptotically provides valid inference for the finite population parameters under a set of regularity conditions. We consider a two–stage sampling design, where the first stage units may be selected with unequal probabilities. We assume that the model and sampling hierarchies are the same. We treat the first stage sampling units as the unit of interest, by using an ultimate cluster approach. The estimating functions are defined at the ultimate cluster level of the hierarchy.
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Published date: 4 August 2016
Additional Information:
Session: 320 Statistical Methods for Complex Survey Data— Contributed Survey Research, Chair(s): Bhatta Dilli, University of South Carolina
Venue - Dates:
Proceedings of the Survey Research Methods Section, ASA, 2016: Survey Research Methods Section, , Chicago, United States, 2016-07-29 - 2016-08-04
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Local EPrints ID: 474287
URI: http://eprints.soton.ac.uk/id/eprint/474287
PURE UUID: ec5bbb60-d446-4ec4-98d4-ece55403eb38
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Date deposited: 17 Feb 2023 17:34
Last modified: 17 Mar 2024 04:17
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Author:
Melike Oguz Alper
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