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Nowcasting in triple-system estimation

Nowcasting in triple-system estimation
Nowcasting in triple-system estimation
Multiple systems estimation uses samples that each cover part of a population to obtain a total population size estimate. Ideally, all available samples are used, but if some samples are available (much) later, one may use only the samples that are available early. Under some regularity conditions, including sample independence, two samples are enough to obtain an asymptotically unbiased population size estimate. However, the assumption of sample independence may be unrealistic, especially when the samples are derived from administrative sources. The assumption of sample independence can be relaxed when using three or more samples, which is therefore generally recommended. This may be a problem if the third sample is available much later than the first two samples. Therefore, in this paper we propose a new approach that deals with this issue by utilizing older samples, using the so-called expectation maximization algorithm. This leads to a population size nowcast estimate that is asymptotically unbiased under more relaxed assumptions than the estimate based on two samples. The resulting nowcasting model is applied to the problem of estimating the number of homeless people in The Netherlands, leading to reasonably accurate nowcast estimates.
0282-423X
519-536
Zult, Daan B.
ce9fcd6b-0119-443e-af59-d83a69c11cfa
van der heijden, Peter G.M.
85157917-3b33-4683-81be-713f987fd612
Bakker, Bart F.M.
8b086ec4-999b-4966-bef5-f23cfc098fd7
Zult, Daan B.
ce9fcd6b-0119-443e-af59-d83a69c11cfa
van der heijden, Peter G.M.
85157917-3b33-4683-81be-713f987fd612
Bakker, Bart F.M.
8b086ec4-999b-4966-bef5-f23cfc098fd7

Zult, Daan B., van der heijden, Peter G.M. and Bakker, Bart F.M. (2025) Nowcasting in triple-system estimation. Journal of Official Statistics, 41 (1), 519-536. (doi:10.1177/0282423X241311751).

Record type: Article

Abstract

Multiple systems estimation uses samples that each cover part of a population to obtain a total population size estimate. Ideally, all available samples are used, but if some samples are available (much) later, one may use only the samples that are available early. Under some regularity conditions, including sample independence, two samples are enough to obtain an asymptotically unbiased population size estimate. However, the assumption of sample independence may be unrealistic, especially when the samples are derived from administrative sources. The assumption of sample independence can be relaxed when using three or more samples, which is therefore generally recommended. This may be a problem if the third sample is available much later than the first two samples. Therefore, in this paper we propose a new approach that deals with this issue by utilizing older samples, using the so-called expectation maximization algorithm. This leads to a population size nowcast estimate that is asymptotically unbiased under more relaxed assumptions than the estimate based on two samples. The resulting nowcasting model is applied to the problem of estimating the number of homeless people in The Netherlands, leading to reasonably accurate nowcast estimates.

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e-pub ahead of print date: 24 January 2025
Published date: 1 March 2025

Identifiers

Local EPrints ID: 499966
URI: http://eprints.soton.ac.uk/id/eprint/499966
ISSN: 0282-423X
PURE UUID: 6fea2eaf-545c-4d7a-99d9-4bce935a5187
ORCID for Peter G.M. van der heijden: ORCID iD orcid.org/0000-0002-3345-096X

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Date deposited: 09 Apr 2025 18:56
Last modified: 10 Apr 2025 01:49

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Contributors

Author: Daan B. Zult
Author: Bart F.M. Bakker

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