Application of P-TOPALS for Smoothing Input Data for Population Projections ‘At the Edge’

IF 2.6 3区 社会学 Q1 DEMOGRAPHY
Sigurd Dyrting, Andrew Taylor, Tom Wilson
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引用次数: 0

Abstract

Sparsely populated areas of developed countries are regions of great demographic diversity and dynamism. While they remain strategically and economically important, trends in urbanization and technology have increased their relative sparsity and isolation making centralized government, service delivery and planning a challenge. Populations of their sub-jurisdictions are small and often exhibit significant heterogeneity in key demographic characteristics, not least between their Indigenous first residents and non-Indigenous citizens. Development of projection models for these areas is challenged by significant input data paucity, biases and structural issues related to the data collection and estimation architectures in place to gather input data across diverse and small populations. While this is the case, the demand for and importance of projections is no less for sparsely populated areas than elsewhere. Variants of the cohort component model are important tools for population projections for SPAs, with their grounding in the demographic accounting equation and modest input requirements. Nevertheless, to attain fit-for-purpose input data requires demographers to consider and select from a growing number of methods for smoothing issues with input data for projections for these regions. In this article we analyze the contributions of recent advances in methods for estimating fertility, mortality, and migration rates for small and diverse populations such as those in SPAs, focusing on the very sparsely populated jurisdiction of the Northern Territory of Australia. In addition to the contributions of our method itself, results at the detailed level demonstrate how abnormal and challenging ‘doing’ projections for sparsely populated areas can be.

应用 P-TOPALS 平滑 "边缘 "人口预测的输入数据
发达国家的人口稀少地区是人口多样性和活力极强的地区。虽然这些地区在战略和经济上依然重要,但城市化和技术发展的趋势加剧了这些地区的相对稀疏和孤立,使集中化的政府管理、服务提供和规划工作面临挑战。这些分辖区的人口规模较小,在关键的人口特征方面往往表现出明显的异质性,尤其是在原住民和非原住民之间。为这些地区开发预测模型所面临的挑战包括输入数据严重不足、偏差以及与数据收集和估算架构有关的结构性问题,这些架构用于收集不同的小规模人口的输入数据。尽管如此,人口稀少地区对预测的需求和重要性并不亚于其他地区。队列构成模型的变体是 SPA 人口预测的重要工具,其基础是人口核算方程和适度的输入要求。然而,要获得合适的输入数据,人口学家需要考虑并选择越来越多的方法来平滑这些地区预测的输入数据问题。在这篇文章中,我们分析了最近在估算小规模和多样化人口(如特别敏感地区的人口)的生育率、死亡率和迁移率的方法方面取得的进展,重点是澳大利亚人口非常稀少的北部地区。除了我们的方法本身的贡献外,详细层面的结果还表明,为人口稀少地区 "做 "预测是多么不正常和具有挑战性。
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来源期刊
CiteScore
3.40
自引率
4.20%
发文量
55
期刊介绍: Now accepted in JSTOR! Population Research and Policy Review has a twofold goal: it provides a convenient source for government officials and scholars in which they can learn about the policy implications of recent research relevant to the causes and consequences of changing population size and composition; and it provides a broad, interdisciplinary coverage of population research. Population Research and Policy Review seeks to publish quality material of interest to professionals working in the fields of population, and those fields which intersect and overlap with population studies. The publication includes demographic, economic, social, political and health research papers and related contributions which are based on either the direct scientific evaluation of particular policies or programs, or general contributions intended to advance knowledge that informs policy and program development.
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