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Estimators in capture–recapture studies with two sources

Estimators in capture–recapture studies with two sources
Estimators in capture–recapture studies with two sources
This paper investigates the applications of capture–recapture methods to human populations. Capture–recapture methods are commonly used in estimating the size of wildlife populations but can also be used in epidemiology and social sciences, for estimating prevalence of a particular disease or the size of the homeless population in a certain area. Here we focus on estimating the prevalence of infectious diseases. Several estimators of population size are considered: the Lincoln–Petersen estimator and its modified version, the Chapman estimator, Chao’s lower bound estimator, the Zelterman’s estimator, McKendrick’s moment estimator and the maximum likelihood estimator. In order to evaluate these estimators, they are applied to real, three-source, capture-recapture data. By conditioning on each of the sources of three source data, we have been able to compare the estimators with the true value that they are estimating. The Chapman and Chao estimators were compared in terms of their relative bias. A variance formula derived through conditioning is suggested for Chao’s estimator, and normal 95% confidence intervals are calculated for this and the Chapman estimator. We then compare the coverage of the respective confidence intervals. Furthermore, a simulation study is included to compare Chao’s and Chapman’s estimator. Results indicate that Chao’s estimator is less biased than Chapman’s estimator unless both sources are independent. Chao’s estimator has also the smaller mean squared error. Finally, the implications and limitations of the above methods are discussed, with suggestions for further development.
1863-8171
23-47
Brittain, Sarah
07904abd-4dac-47f1-99c2-8aba58d56991
Böhning, Dankmar
1df635d4-e3dc-44d0-b61d-5fd11f6434e1
Brittain, Sarah
07904abd-4dac-47f1-99c2-8aba58d56991
Böhning, Dankmar
1df635d4-e3dc-44d0-b61d-5fd11f6434e1

Brittain, Sarah and Böhning, Dankmar (2009) Estimators in capture–recapture studies with two sources. AStA Advances in Statistical Analysis, 93 (1), 23-47. (doi:10.1007/s10182-008-0085-y).

Record type: Article

Abstract

This paper investigates the applications of capture–recapture methods to human populations. Capture–recapture methods are commonly used in estimating the size of wildlife populations but can also be used in epidemiology and social sciences, for estimating prevalence of a particular disease or the size of the homeless population in a certain area. Here we focus on estimating the prevalence of infectious diseases. Several estimators of population size are considered: the Lincoln–Petersen estimator and its modified version, the Chapman estimator, Chao’s lower bound estimator, the Zelterman’s estimator, McKendrick’s moment estimator and the maximum likelihood estimator. In order to evaluate these estimators, they are applied to real, three-source, capture-recapture data. By conditioning on each of the sources of three source data, we have been able to compare the estimators with the true value that they are estimating. The Chapman and Chao estimators were compared in terms of their relative bias. A variance formula derived through conditioning is suggested for Chao’s estimator, and normal 95% confidence intervals are calculated for this and the Chapman estimator. We then compare the coverage of the respective confidence intervals. Furthermore, a simulation study is included to compare Chao’s and Chapman’s estimator. Results indicate that Chao’s estimator is less biased than Chapman’s estimator unless both sources are independent. Chao’s estimator has also the smaller mean squared error. Finally, the implications and limitations of the above methods are discussed, with suggestions for further development.

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More information

Published date: 2009
Organisations: Statistics, Statistical Sciences Research Institute

Identifiers

Local EPrints ID: 210557
URI: http://eprints.soton.ac.uk/id/eprint/210557
ISSN: 1863-8171
PURE UUID: 46746489-7bbc-49ab-8f10-1f677bc49079
ORCID for Dankmar Böhning: ORCID iD orcid.org/0000-0003-0638-7106

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Date deposited: 09 Feb 2012 14:44
Last modified: 15 Mar 2024 03:39

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Author: Sarah Brittain

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