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Can incorporating parity information improve the reliability of completed cohort fertility projections? Insights from a Bayesian generalized additive model approach

Can incorporating parity information improve the reliability of completed cohort fertility projections? Insights from a Bayesian generalized additive model approach
Can incorporating parity information improve the reliability of completed cohort fertility projections? Insights from a Bayesian generalized additive model approach
Fertility projections inform population projections and are used to plan for the
future provision of vital services such as maternity care and schooling. Existing
fertility forecasting models tend to use aggregate births data indexed by age and time alone, thereby neglecting to include information about parity, i.e. the number of previous live-born children. This omission risks ignoring a crucial mechanism of ffertility dynamics. We propose a Bayesian parity-specific fertility projection model to complete cohort fertility, within a generalized additive model (GAM) framework. The use of GAMs enables a smooth age-cohort rate surface to be estimated for each parity simultaneously. We constrain our model using aggregate data and additionally introduce random walk priors on completed family size and parity progression ratios, which are summary fertility measures known to change relatively slowly over time. Using Hamiltonian Monte Carlo methods and data from the Human Fertility Database, we fit our model to 16 countries. We compare our forecasts with the best-performing existing models to quantify the impact of including the parity dimension on predictive
accuracy. Our findings indicate that a parity-specific approach could lead to more plausible and reliable fertility projections, aiding government planners in their decision-making and enabling more tailored policy solutions.
0070-3370
Ellison, Joanne
d1560ac9-2c6c-49e8-b5c4-aa2258624e97
Bijak, Jakub
e33bf9d3-fca6-405f-844c-4b2decf93c66
Dodd, Erengul
b3faed76-f22b-4928-a922-7f0b8439030d
Ellison, Joanne
d1560ac9-2c6c-49e8-b5c4-aa2258624e97
Bijak, Jakub
e33bf9d3-fca6-405f-844c-4b2decf93c66
Dodd, Erengul
b3faed76-f22b-4928-a922-7f0b8439030d

Ellison, Joanne, Bijak, Jakub and Dodd, Erengul (2025) Can incorporating parity information improve the reliability of completed cohort fertility projections? Insights from a Bayesian generalized additive model approach. Demography. (In Press)

Record type: Article

Abstract

Fertility projections inform population projections and are used to plan for the
future provision of vital services such as maternity care and schooling. Existing
fertility forecasting models tend to use aggregate births data indexed by age and time alone, thereby neglecting to include information about parity, i.e. the number of previous live-born children. This omission risks ignoring a crucial mechanism of ffertility dynamics. We propose a Bayesian parity-specific fertility projection model to complete cohort fertility, within a generalized additive model (GAM) framework. The use of GAMs enables a smooth age-cohort rate surface to be estimated for each parity simultaneously. We constrain our model using aggregate data and additionally introduce random walk priors on completed family size and parity progression ratios, which are summary fertility measures known to change relatively slowly over time. Using Hamiltonian Monte Carlo methods and data from the Human Fertility Database, we fit our model to 16 countries. We compare our forecasts with the best-performing existing models to quantify the impact of including the parity dimension on predictive
accuracy. Our findings indicate that a parity-specific approach could lead to more plausible and reliable fertility projections, aiding government planners in their decision-making and enabling more tailored policy solutions.

Text
Parity-specific fertility projections accepted manuscript - Accepted Manuscript
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Accepted/In Press date: 9 June 2025

Identifiers

Local EPrints ID: 503488
URI: http://eprints.soton.ac.uk/id/eprint/503488
ISSN: 0070-3370
PURE UUID: d0ed52a0-af4b-4540-9114-f8b14b06a564
ORCID for Joanne Ellison: ORCID iD orcid.org/0000-0002-6973-8797
ORCID for Jakub Bijak: ORCID iD orcid.org/0000-0002-2563-5040
ORCID for Erengul Dodd: ORCID iD orcid.org/0000-0001-6658-0990

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Date deposited: 04 Aug 2025 16:38
Last modified: 05 Aug 2025 02:01

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