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Modelled Population Estimates for Papua New Guinea, version 1.0

Modelled Population Estimates for Papua New Guinea, version 1.0
Modelled Population Estimates for Papua New Guinea, version 1.0
This project was initiated in 2021 to generate modelled population estimates for Papua New Guinea (PNG) to support their census preparations. It was powered by the Australian Government through the PNGAus partnership, the United Nations Population Fund (UNFPA)and the PNG National Statistical Office. The project team combined recent 2019-2021 malaria bednet campaign data, urban structural listing 2021 data, and geospatial covariates to model and estimate population numbers at census unit level, and aggregate at other relevant administrative units (e.g., national, province, and districts) using a Bayesian statistical hierarchical modelling framework. The approach facilitated simultaneous accounting for the multiple levels of variability within the data hierarchy. It also allowed the quantification of uncertainties in parameter estimates. These model-based population estimates can be considered as most accurately representing the years 2020-21. This time period corresponds to the malaria survey and urban structural listing survey observations (2019-2021; median year: 2020) and the period of the satellite imagery used to generate settlement footprints (2021). Although the methods were robust enough to explicitly account for key random biases within the datasets, it is noted that systematic biases, which may arise from sources other than random errors within the observed data collection process, are most likely to remain. These data were produced by the WorldPop Research Group at the University of Southampton in collaboration with the National Statistical Office of PNG and UNFPA under the project called “Population-modelled estimation for Papua New Guinea in collaboration with the National Statistical Office, 2021-22” (PNG40-0000004504). The final statistical modelling was designed, developed, and implemented by Chris Nnanatu. Data processing was done by Amy Bonnie with additional support from Tom Abbott, Tom McKeen, Heather Chamberlain, Ortis Yankey, Duygu Cihan and Assane Gadiaga. Project oversight was done by Attila Lazar and Andy Tatem. Household survey listing data were provided by the National Statistical Office, and the settlement footprint was generated by Planet.
Population, Population age and sex structure
University of Southampton
WorldPop,
e0dc4f20-2c0d-494b-8adf-11cb57608ab8
National Statistical Office of Papua New Guinea,
daf0f7d0-12dc-4a98-829a-012b5b446893
WorldPop,
e0dc4f20-2c0d-494b-8adf-11cb57608ab8
National Statistical Office of Papua New Guinea,
daf0f7d0-12dc-4a98-829a-012b5b446893

WorldPop, and National Statistical Office of Papua New Guinea, (2023) Modelled Population Estimates for Papua New Guinea, version 1.0. University of Southampton doi:10.5258/SOTON/WP00763 [Dataset]

Record type: Dataset

Abstract

This project was initiated in 2021 to generate modelled population estimates for Papua New Guinea (PNG) to support their census preparations. It was powered by the Australian Government through the PNGAus partnership, the United Nations Population Fund (UNFPA)and the PNG National Statistical Office. The project team combined recent 2019-2021 malaria bednet campaign data, urban structural listing 2021 data, and geospatial covariates to model and estimate population numbers at census unit level, and aggregate at other relevant administrative units (e.g., national, province, and districts) using a Bayesian statistical hierarchical modelling framework. The approach facilitated simultaneous accounting for the multiple levels of variability within the data hierarchy. It also allowed the quantification of uncertainties in parameter estimates. These model-based population estimates can be considered as most accurately representing the years 2020-21. This time period corresponds to the malaria survey and urban structural listing survey observations (2019-2021; median year: 2020) and the period of the satellite imagery used to generate settlement footprints (2021). Although the methods were robust enough to explicitly account for key random biases within the datasets, it is noted that systematic biases, which may arise from sources other than random errors within the observed data collection process, are most likely to remain. These data were produced by the WorldPop Research Group at the University of Southampton in collaboration with the National Statistical Office of PNG and UNFPA under the project called “Population-modelled estimation for Papua New Guinea in collaboration with the National Statistical Office, 2021-22” (PNG40-0000004504). The final statistical modelling was designed, developed, and implemented by Chris Nnanatu. Data processing was done by Amy Bonnie with additional support from Tom Abbott, Tom McKeen, Heather Chamberlain, Ortis Yankey, Duygu Cihan and Assane Gadiaga. Project oversight was done by Attila Lazar and Andy Tatem. Household survey listing data were provided by the National Statistical Office, and the settlement footprint was generated by Planet.

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More information

Published date: 27 July 2023
Keywords: Population, Population age and sex structure

Identifiers

Local EPrints ID: 480526
URI: http://eprints.soton.ac.uk/id/eprint/480526
PURE UUID: f82d20ba-7a54-4c82-91cd-be47e2448e79

Catalogue record

Date deposited: 04 Aug 2023 16:31
Last modified: 04 Aug 2023 16:46

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Contributors

Creator: WorldPop
Creator: National Statistical Office of Papua New Guinea

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